_ _ _ __ _ _5 lZ'O POLICY RESEARCH WORKING PAPER 1 230 Unemployment in Mexico AJthoughMexico's unemployment rates, Its Characteristics measured over a week, are low (3 to 6 percent), i 5 to 20 and Determinants percent of the population experiences at least one spell Ana Revenga of unemployment over a Michelle Ribozud year Unemployment is concentrated among the young; Half the workers under 20 experience a spelf of unemployment over a year, but only a tenth of workers over 30. The World Bank latin America and the Caribbean Country Departnent II Huirnan Resources Operations Division Country Operations 1 and the Environment Division December 1993 [i,iH R FSEAR( H W0RKKNOI 1'F I2,3(0 Sutmmary findings The restI iruturtrii I of M e\iL. )s ck i wn III has, h I d perCICiti 1( t. I ; reL enit. %~ rh[ th( lrte it, rcises ill sil '~~risi n~ivlittle t'ttc'tt oII Nl.\Ie i,A ll Hlif IIFF i1CIflliiv1`, :ii FA JfMn pLu7uCO'11 Imdill 20F oi %itlil WhidlC I O slW C-VeFI ill tIlt' WorSt \CLIIS. 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(ta:Fc UNEMPLOYMENT IN MEXICO: AN ANALYSIS OF ITS CHARACTERISIICS AND DETERMINANTS Ana Revenga and Michelle Riboud i EXECUTIVE SUMMARY Over the past six years, Mexico has successfully implemented a program of sweeping economic reforms and made major strides towards a complete restructuring of its economy. Surprisingly, the reform process has occurred with little impact on unemployment. Official statistics drawn from the census and from employment surveys report an unemployment rate of 2.8% in 1991. An analysis of trends indicates that, even in the worst years of economic crisis, average unemployment rates did not increase beyond 6%. These figures seem very low when compared to those for other countries, especially given the magnitude of reforms and structural changes recently experienced by the Mexican economy. They raise a number of questions about the nature and relative importance of unemployment in Mexico. A first question is whether the official definition of unemployment adequately reflects the importance of the phenomenon. In other words, is unemployment properly measured? A second issue relates to who bears the burden of unemployment. From a welfare perspective it matters greatly whether the cost of unemploy ment is widely spread or whether it falls primarily on a few. Even if only a small fraction of the labor force is unemployed at any point in time, these individuals may have specific characteristics that would make them particularly and repeatedly vulnerable, and therefore deserving of special attention. What are, in fact, the characteristics of the unemployed? Can one identify population groups that are more vulnerable to unemployment? Within each population group, is the risk of unemployment concentrated on a small number of individuals who are repeatedly hit? Another issue revolves around the relative importance of long-term unemployment. Specifically, one would want to know whether most unemployment is associated with normal turnover (movements from one job to the next), or rather comprised primarily of individuals who are out of work for a long period of time. All these questions have important implications for the design of policies and programs aimed at the unemployed. In this report, we attempt to answer these questions using data drawn from two surveys. Our first source of data is the quarterly urban labor force survey (ENEU), a household-based survey of sixteen main urban areas. A key feature of the ENEU is its panel structure, which allows us to analyze certain aspects of unemployment --such as unemployment duration, persistence and turnover- which could not be analyzed with purely cross-sectional surveys. The ENEU's main drawback, however, is its limited coverage; it provides no information on the population from the rural areas or from smaller urban centers. Our second source of data is the National Employment Survey (ENE), which expands beyond the ENEU sample to cover in addition all other main urban areas and a sample of the rural population. The ENE is carried out every 2-3 years. We work with both surveys, drawing on the larger ENE sample principally for the analysis of the characteristics and determinants of unemployment and on the iNEU, and its panel structure, for the analysis of the dynamics of unemployment. The main findings of the report are the following: ii (1) The overall structure of unemployment is broadly similar to that observed for other countries. Unemployment rates are highest for the young -particularly for those 16 to 25 years of age- and have been consistently higher among women than among men. With regard te education, the highest unemployment rates for males correspond to those with either incomplete or complete lower secondary schooling (7 to 9 years of school). For females, the highest rates are found among those with either complete low secondary or higher secondary (9 to 12 years of school). This pattern of higher unemployment rates for secondary school graduates differs somewhat from that observed in other countriec, where unemployment appears to be more prevalent among the less-educated. (2) Unemployment rates as measured by official statistics are quite low, and have remained moderate throughout the adjustment process. This reflects the fact that most of the adjustment occurred through the real wage --which showed substantial downward flexibility-- rather than through employment. One consequence of this form of adjustment is that there has been relatively little productivity-enhancing employment restructuring. (3) The definition of unemployment used in official statistics tends to underestimate the true number of people who are jobless, because it fails to consider transitions in and out of the labor force, which are extremely frequent. The data show that 25% of all unemployment spells for men and 53% for women end in withdrawal from the labor forr, and that a large fraction of those who withdraw reenter the labor force within 3 months. These short spells out of the labor force should, in most cases, be considered as unemployment. (4) Using a more extensive alternative definition of unemployment!', the rate of male unemployment in 1988 is shown to increase from 3.4% to 6.4%. The largest increases in unemployment are observed for individuals under 20 years of age, ! :or those with little education. The use of this alternative definition thus yields a structurc jf unemployment by education more similar to that observed in most countries. (5) Multivariate analysis confirms that age, sex and education are key determinants of unemployment. Estimates obta' i' - from a probit model reveal that the probability of unemployment decreases with age and education for both men and women. The probit analysis also finds a strong effect of marital status, although this effect tends to go in opposite .lirections for men and women. Marriage is associated with lower risk of unemployment for men and foL more educated women, but increases the probability of unemployment for women at low levels of education. (6) The analysis of the distribution of completed unemployment spells suggests that the typical unemployment spell is not long. About 40% of all unemployment spells among men end within three months, and one-half of all spells are completed within four to five months.w The mean duration of a completed spell for males is about 5.7 months. Mean duration for 1/ Which includes individuals who are not working and not actively looking for a job, but who are not studying, nor taking care of the household, nor retired nor physicaUy disabled. 2' These figures refer to the standard definition of unemployment. Corresponding figures for the alte.r-a,n.e defunition of unemployment are presented in Table 11. Throughout the report, results regarding composition, duration and persistence of unemployment are presented separately for both definitions o' the unemployed. iii women is 7.2 months. Thus higher average unemployment rates for women are partly explained by longer duration. (7) Although the typical spell of unemployment is relatively short, there is a sizeable proportion of unemployed ineividuals (129o for all males) who suffer spells of over a year. As a result, almost 70% of all unemployment in 1990-91 was attributable to spells lasting at least six months, and 30% corresponded to spells lasting at least a year. (8) Duration of unemploymen is longer for older workers, but does not seem to vary substantially by educational attainment. The report also tinds that household heads and individuals with houFehold responsibilities tend to exit from unemployment faster. (9) Finally, the report examines the degree of persistence of unemployment over time for the whole population and within age and education categories. It finds that although unemployment rates, as measured over a one-week period, are low (on the or,.!er of 3-6%), a significant fraction of the population (15-20%) experiences at least one spell of unemptoyment over a year. Sharp differences exist between young and adult workers. About one-half of teernagers experience at least one spell of unemployment in the course of a year, as compared to 10% of workers over the age of 30. This suggests that while the incidence of unemployment is widely shared among youth, it is concentrated on a much smaller group among older workers. L IN1 ODUCTION Over the past six years, Mexico has successfully implemented A program of sweeping economic reforms and made major strides towards a complete restructuring of its economy. Until 1985, the Mexican economy was highly protected, dominated by state-run industries, and heavily burdened by debt. As a result of the policy changes and reforms that have taken place since then, the economy's prospects today are vastly different. A fast and far-reaching trade reform has turned Mexico into one of the more open economies in the world. Domestically, the reforms have been equally comprehensive. The financial sector has been restructured and liberalized, fiscal expenditures have been cut dramatically, and the tax system has been overhauled. Key sectors, such as transport and telecommunications, have been deregulated. Moreover, in a still ongoing process of privatization, more than two-thirds of state enterprises have 'oeen sold, closed or spun off. Despite the rapid and far-reaching reforms, which have had a clea: impact on the labor market, unemployment has remained tairly low throughout the adjustment process. Official statistics drawn from the census and from employment surveys report a very low unemployment rate (2.8% in 1991). An analysis of the trends indicates that even in the worst years of the adjustment process, ave rage unemployment rates did not increase beyond 6%. These figures, surprisingly low by international standards, raise a number of questions about the nature and relative importance of unemployment in stexico. A first question is whether the official definition of unemployment adequately reflects tihe importance of the phenomenon. In other words, is unemployment properly meacured? A second issue relates to who bears the burden of unemployment. From a welfare perspective ic matters greatly whether the cost of unemployment is widely spread or whether it falls primarily on a few. Even if only a small fraction of the labor fc.rce is unemployed at any point in time, these individuals may have specific characteristics that would make them particularly and repeatedly vulnerable, and therefore deserving of special attention. What are, in fact, the characteristics of the unemployed? Can one identify population groups that are more vulnerable to unemployment? Within each population group, is the risk of unemployment concentrated on a small number of individuals who are repeatedly hit? Another issue revolves around the relative importance of long-term unemployment. Specifically, one would want to know whether most unemployment is associated with normal turnover (movements frcm one job to the next), or rather comprised primarily of individuals who are out of work for a long period of time. All these questions have important implications for the design of policies and programs aimed at the unemployed. In this report, we attempt to answer these questions using data drawn from two surveys. Our first source of data is the quarterly urban labor fPrce survey (ENEU). The ENEU, a household-based survey of sixteen main urban areas, elicits a wealth of information on sociodemographic characteristics, employment status, type of job, monthly salary and hours of work. For those individuals who are unemployed, it also reports the length of their unemployment spells up to the time of the survey. It is the main source of time-series household-based labor market data, having bee1, carried out continuously since 1983. A key feature of the ENEU is its panel structure. The survey uses a quarterly rotation system such that each rotation group (of households) remains in the survey for five consecutive quarters, and 2 then leaves the sample. By matching individual survey responses in successive quarters, flows between labor force states can be roughly estimated. This allows us to analyze certain aspects of unemployment --such as unemployment duration, persistence and turnover-- which could not be analyzed with purely cross-sectional surveys. The ENEU's main drawback, however, is its limited coverage: it provides no information on the populations from the rural areas or from smaller urban centers. Our second source of data is the National Employment Survey (ENE), which expands beyond the ENEU sample to cover in addition all other main urban areas and a sample of the rural population. The ENE is carried out every 2-3 years. The first ENE was fielded in 1988 and a second in 1991. The next ENE is planned for 1993. In its urban coverage, the ENE is very similar to the ENEU: the sampling schemes are alike and the survey questionaires identical. This allows us to work with both surveys, drawing on the larger ENE sample principally for the analysis of the characteristics and determinants of unemploymen. and on the ENEU, and its panel structure, for the analysis of the dynamics of unemployment. 11. STRUCTURE AND TR ENDS OF UNEMPLOYMENT A. General Trends .n Unemployment Official unemployment figures for Mexico are reported quarterly by the National Strtistics Institute (INEGI) on the basis of the ENEU. These figures reflect the official definition of unemployment, which consider s an individual as unemployed if he/she participates in the labor force and fulfills the following conditions: - worked for less than one hour during the week preceding the survey - was not sick, on paid vacation or waiting to return to work wvithin the following month - was actively searching for a job during the month before the survey Table I reports these official unemployment rates for the 1980-91 period, separately for men and women.3' The trends should be interpreted with some care since the coverage of urban areas in the survey has increased over the period, from 12 in 1980 to sixteen from 1985 to date. The table shows that the aggregate urban unemployment rate in Mexico is quite low. In 1990, the unemployment rate stood at 2.8%, and even in the worst years of the ac justment process, the average rate did not rise beyond 6. 1 %. The table also reveals that the unempioyment rate has consistently been higher among women than among men. In 1983, the unemployment rate for men peaked at 5.3%, while that for women stood a full two percentage points higher at 7.6%. B. Characteristics and Structure of Unemplovment Table 2 presents unemployment figures by age and education categories for men and women. These figures were obtained using individual response data from the 1988 National Employment Survey (ENE). The numbers show that unemployment rates are highest for the young, particularly 3/ Figures for 1980-82 are from the Continuous Survey on Occupation, the predecessor of the ENEU. 3 for those 16 to 25 years of age. In 1988, the unemployment rate for males aged 16 to 20 stood at 8.4%, while . at for males 21 to 25 was 5.3%, as compared to an average male unemployment rate of 3.4%. Similarly, for women aged 16 to 20, the unemployment rate in 1988 stood at 14%, and for those aged 21 to 25 percent it stood at 8.9%, while the female average was 6.3%. By educational attainment categories, the highest rates for males correepond to those with either incomplete or complete low secondary (7-9 yrs of schooling). For women, the highest rates correspond to those with either complete low secondary (9 yrs) or higher secondary (10-12 yrs) levels of education. The above 4.-mrnployment figures are oased upon a strict definition of unemployment that defines an individLsi as unemployed only if he/she is actively searching for a job. However, research on other countries suggests that the distinction between "unemployment" and "not in the labor force" based on intensity of search is often very weak.y For examp!e, in their study of U.S. unemployment, Clark and Summers (1979) find that repeated spells of unemployment interrupted only by brief spells outside the labor force are very comnmon. They find that approximately 50% of all unempioyment spells for males aged 16 to 20 end in withdrawal from the labor farce. About 8G% of those, however, return to employment within 2 months. Although less pronounced, the patterns are similar for individuais 20 and over. These findings, and those for other countries, underscore the importance of looking beyond the official definition of unemployment to transitions in and out cf the labor force in understanding unemployment patterns. -.ible 3 presents some characteristics of labor force withdrawal and reentry based on data from the 1990-1991 ENEUs. As discussed above, the ENEU uses a quarterly rotation system such that each rotation group (of households) remains in the survey for five consecutive quarters, and then leaves the sarnple. We obtained panel data for the rotation group that remained in the survey trom the third quarter of 1990 to the third quarter of 1991, matched individual survey responses in the successive quarters, and used these data to estimate flows between labor force states. Table 3 shows that 25% of all unemployment spells for men and 53% of all unemployment spells for females, end in withdrawal from the labor force. As is the case in the U.S., these fractions are hig,a2r for those under 20 years of age: 37% of unemployment spells for mnales aged 16 to 20 end in withdrawal from the labor force, while the comparable figure for women is 55%. A large fraction of those who withdraw (55% of males and 41% of females), reenter the labor force within 3 months. This suggests that at any point in time the disticntion between unemployed" and "out of the labor force" is quite fuzzy for certain groups of workers and implies that the official definition of unemployment, which includes only those individuals who report to be actively searching for a job, will tend to underestimate the true number of people wr., are in fact jobless. Our analyses of the individual survey responses from the ENE and the ENEU reveal a large fraction of men who report to be idle -- these individuals are out of work, able to work, not studying, and not taking care of the household. The panel structure of the ENEU allows us to follow them over time, revealing that many of them subsequently find employment, and often do so without going through a spell of what is officially defined as unemployment -ie. without reporting to have been actively searching for a job. This raises a question: how should one treat these apparently idle workers? As out of the labor force? As discouraged unemployed workers who have given up searching actively but will nevertheless take a job if the opportunitv arises? 4/ See Clark and Summers, 1979 for an analysis of unemployment and labor force transitions in the U.S.. 4 Table 4 presents an alternative definition of unemployment for males, computed using the 1988 ENE, which includes those who appear to be idle -that is, those individuals who are not working, studying, taking care of the household or otherwise occupied, but who are too younr. to he retired and are physical'y able to woLk. We do not compute similar alternative unemployment rates for femaies since their labor force attachment patterns are necessarily more complex because of their household and child-rearing responsibilities. Column (I) in Table 4 shows the official unemployment rate, calculated to include only those who have actively looked for a job during the month preceding the survey. Column (2) shows the unemployment rate computed including thosc who looked for a job sometime during the two months preceding the survey. Finally, co;umn (3) presents an alternative definition of unemployment, which includes those who appear to be idle TUsing the alternative definition of unemployment increase the average rate significantly frot., 3.4% to 6.4%. The most ir.-eresting feature of the table is that the largest increases correspond to t.,ose under 20 and to those with little education. This suggests that the choice of definition can lsave important implications for the analysis of the structure and characteristics of unemployment. Tables 5 and 6 report the distribution of unemployment by age and education categories. Using the standard definition of unemployment (corresponding to the ofticial rate and to column (1) in Table 4), we find that for men Ps much as 60% of total unemployment is accounted for by individuals below the age of 25. The comparable fraction for ferrmales is even higher at about 77%. As regards education, 53% of total male unemploynment and 62% of total fernale unemployment corresponds to individuals with some form of secondary education. Individuals with completed secondary education (9 years of schooling) a-count for 20% of total male unemployment and about 19% of total female unemployment. Those with higher secondary education (10-12 years of schooling) account for an additional 20% of male unemployment and a stunning 35% of female unemployment. These figures indicate that unemployment is concentrated among those with a certain level of education and not, as could be expected, among the least educated. This su,gests, in turn, that the reservation wage and, possibly, family income are important determinants of unemployment: more educated individuals will tend to have both a higher reservation wage and more family income, which would allow them to afford longer job search periods. These conclusions have to be modified slightly when the alternative definition is used. Taking into account those in, .viduals who report to be idle sli;htly alters the age pattern, giving more importance to those between the ages of 12 and 16. More importantly, using the alternative definition also tends to increase the fraction of males with less than secondary education in total unemployment. This reflects the fact that many of those individuals who report to be idle have little education. The above tables suggest that a large fraction of the unemployed are young. This raises the question of how many of these young unemployed individuals are first-time job seekers or new entrants into the labor force? Table 7 presents the fraction of total unemployment accounted for by new entrants from 1983 through 1991. nte table shows that, although it is still significant, the proportion of new labor market entrants among the unemployed has actually declined steadily since 1983, from nearly 30% to about 19% in 1991. III - THE DETERMINANTS OF UN IEMPLOYMENT The previous section analyzed both unemployment rates and the distribution of unemployment by sex, age and education levels. However, further statistical analysis is needed to take into 5 consideration other possible determinants of unemployment and to ascertain the joint effect of different variables as well as the interaction between them, To this effeLt, this section presents the results of a multivariate analysis which aims at estimating the effect of different variables - age, education, geog-aphical location and marital status - on tde probability of t ing unemployed in a given week. Probit models are estimated for men and won,cn, using data on urban areas drawn from the 1988 National Employment Surve, (ENE). Results are presented in Tables 8 to 10. Our estimates show that sex, educa ;on levels, age, marital status and geographical location are important determinants of the probability of unemployment. They also show that the effect of some of these variables is somewhat differet t from what was observed earlier when interactions between variab!es were not taken into account. A. Results for Males Results obtained for men are presented in tables 8 4nd 9. Table 8 reports probit estimates obtained with the two definitions of unemployment. Table 9 considers only the broader definition but reports estimates ob.ained by dividing the sample by age and education groups. Table 8 shows that while the effect of schooling on the proba'>ility of being unemployed is positive when only active job seekers are considercd as unemployed, the effect is reversed when a broader defirition of unemployment is used. This result is consistent with what was observed earlier in the previous section. Movements in and out of the labor force over short time spans, as well as low search intensity, are more prevalent among low educated workers. When this is taken into account, the probability of being unemployed appears higher at lower levels of education. Table 9, which reports estimates obtoined by dividing the sample by education levels, indicates that the probability of unemployment declines with education up to 6 years of schooling; beyond, it remains constant. Age decreases the likelihood of being unemployed up to the age of about 45. The effect is not linear: the decline is much stronger at an early stage of working life (between ages 12 and 20) than afterwards; it is also sharper among secondary graduates that for other levels of el' cation (see table 9). Being married or cohabitating reduces significan.ly the p.obability of being unemploye.d, which is consistent wiu the hypothesis thar family responsabilities induce greater labor force attachment among men. Regional differences also appear to be signiticant. Estimates obt.ined for the whole sample suggest that the Drobability of unemployment is higher in Mexico City (the DF) than in other parts of the country. H 2ver, when the sample is divided into education groups (as shown in Table 9, column 6), this effect disappears for those with at least 10 years of schooling, suggesting that more highly educated workers are not any more likely to be unemployed in the D.F. than in other regions of Mexico. Similarly, while the probability of unemployment does not appear higher in the northern states of Mexico than in the center or southern states for the sample as a whole, distinguishing according to age and education shows that the likelihood of being unemployed is higher in the North for teenagers (and similar to what is observed in the DF). It is also higher for individuals with less 6 than 10 years of schooling There is obviously a strong demand for skilled workers both in the DF and in the N4orth which makes them less vulnerable to unemployment than other education groups. B. Results for Females. Estimates obtained for women (Table 10) refer only to the standard definition of unemployment. As explained in the previous section, it is difficult to construct an appropriate braoder definition of unemployment for women because of their more complex patterns of labor force participation, resulting from their g'eater household and family responsibilities. The effect of schooling on the likelihood A4 being unemployed appears positive and significant (the same effect was found for men when a restr tive definition of unemployment was used). This positive effect, however, only occurs up to 6 years of schooling. Beyond, the effect is no longer statistically significant. As for men, the effect of age is negative and significan: up to the age of 45. Thbe decline is stronger for vomen with at least 7 years of schooling than for women wi;h lower 'evels of education. When the sample is divided into three age groups, the negative effect of age only appears atter the age of 20, while for men, the decline is sharp even among teenagers. Significant differences can be observed between men and women regarding the effect of marital status. While marriage can be clearly associated with lower risk of unemployment for men, it increases the probability of unemployment for women at low levels of education, but decreases it at higher l3vels. Cohabitation, which appears more frequently among the less educated, also tends to increase the likelihood of unemployment. Both effects most likely reflect patterns of labor force attachment which are consist nt with what is observed in most countries. Marriage, and to some extent cohabitation, are correlated with family responsabilities which increase the demand for women's time spent at home. Regional variables confirm the greater probability of unemployment in the DF than in other parts of the country. Although the effect is weaker at higher levels of education, it still persists. In the northern states, the lower probability of unemployment found for older and more educated women seems consistent with the hypothesis that the demand for labor in the North is biased towards educated and experienced workers. Overall, these results seem consistent with human capital theory. Theory predicts that, as work experience is acquired, specific human capital stock is built up, iointly financed by the worker and the firm, and which neither employer nor employee wish to loose. This reduces incentives for both quits and layoffs. As a result, one can expect a decrease in the probability of unemployment with age. The fact that, for women, this effect only appears after the age of 20 and not earlier as for men, suggests that the job matching process takes more time for them. In the same way, firms are expected to invest more in more educated workers as human capital acquired on the job is highly complementary with education. This also induces a higher probability of unemployment for workers with low levels of education and little specific on-the-job human capital. IV. DURATION OF rNEMPLOYNIENT 7 The analysis in sections 11 and III suggests that there are some important differences in unemployment rates among demographic groups. In this section, we extend our analysis of unemployment differentials, with particular attention to the dynamics of unemployment and how they differ by sex, age and education. Recent research in labor economics suggests that unemployment should be viewed not as a static phenomenon affecting a stagnant pool of job seekers, but rather as the result of individuals flowing in and out of unemployment, each experiencing jobless spells of varying length. At any point in time, observed unemployment may comprise a number of individuals experiencing very short spells of unemployment as they move from one job to another (the "churning" or "normal turnover" component of unemployment), as well as a smaller number of people who are out of a job for a long time. The relative importance of these two components in explaining observed unemployment has important welfare implications. If most of unemployment is associated with normal turnover, the burden will be widely spread and few individuals suffer greatly. If, however, most unemployment is associated with a few individuals remaining unemployed for extended periods of time, the hardship associated witn unemployment will fall primarily on a few. This perspective on unemployment emphasizes the difference between frequency and duration of unemployment, and suggests that the measured unemployment rate, in itself, contains relatively little information: a similar rate of unemployment could reflect a large proportion of the labor force being unemployed for a short period of time, or a small group experiencing long spells of unemployment. Better insights into the nature of unemploynent in Mcxico may be gained by explicitly exploring the dynamics of unemployment and labor market behavior. A. Analysis of the Distribution of Spells of Unemplovment. We begin our analysis by examining the distribution of the duration of completed unemployment spells. We calculate this distribution using individual data for the 1990-91 quarterly urban laDor force survey (ENEU). The questions we seek to answer are: (i) what is the mean duration of a completed spell?; and (ii) what is the relative importance of long-term unemployment? The procedure we used to calculate the distribution of unemployment spells is the following. We first constructed a dataset comprising two ENEU cohorts. The first cohort included individuals wh.o were unemployed in the third quarter of 1990. These individuals were then observed at discrete three-month intervals over the follcw.ng twelve months. The second cohort included individuals wno became unemployed in the fourth quater of 1990 and were not in the first cohort. For this latter cohort, individuals were followed for only nine months. As discussed above, most individuals in our dataset report the duration of their (incomplete) unemployment spell up to the time of the survey. We calculate complete unemployment spells by tracking individuals over time, identifying their transitions to employment, and adding time elapsed until the job was found to the incomplete unemployment spell reported in the initial quarter. Unfortunately, the ENEU does not include a question on starting date for the current job. As a result, if an individual moves from unemployment one quarter to employment the next, it is impossible to know exactly when in the intervening three months the transition took place --in other words, knowing which quarter an individual finds a job does not allow us to compute the exact length of the unemployment spell. To obtain a fairly smooth distribution of spells over the quarter, we assume that rifty percent of those who found jobs exited unemployment within one month, thirty 8 percent exited in the second month, and the remaining twenty percent exited in the third month. 1' If an individual remains unemployed at the end of one year, his/her unemployment spell is truncated at twelve months (53 weeks). Some basic features of the distribution ot completed unemployment spells are presented in Table 11 for males and Table 12 for females. For males, we present separate statistics for the two alternative definitions of unemployment presented in Sections II and III above. The first five rows of Table 11 show some basic duration statistics obtained using the standard definition of unemployment (ie. excluding idle/discouraged workers). These numbers suggest that the typical unemployment spell is not long.§' Approximately forty percent of all unemployment spells in 1990-91 were completed within three months, and one-half of all spells were completed within four to five months. The mean duration of a completed spell for males was about 5.7 months.2' There are slight differences in duration patterns by age, with young and prime-age males exiting unemployment more quickly than older males (those aged 41 and over). Unemployment duration also appears to differ by educational attainment, with duration being shortest for individuals with secondary education. It is interesting to note that the average unemployment rate is actually higher for this educational group than for the less and more educated (in 1990, the unemployment rate for those with seven to nine years of schooling was 3.3% versus 1.6% for those with one to six years of schooling and 2.3% those with ten or more). Given that unemployment duration is shorter for those with secondary education, their higher rate must necessarily reflect a higher incidence of unemployment among that group. Although the typical spell of unemployment does not appear to be long, there is a sizeable proportion of unemployed individuals (12% for all males) who suffer spells of unemployment of over a year. This proportion is highest among older workers (those 41 and over). Table 13 weights spells of unemployment by their length to obtain the distribution of months of unemployment. This exercise yields an interesting result: although most spells are relatively short, unemployment seems to be concentrated in longer spells, Using the standard definition of unemployed (column I of Table 13), we find that almost seventy percent of all unemployment in 1990-91 was attributable to spells lasting at least six months, and that thirty percent corresponded to spells lasting at least a year. The bottom five rows of Table 11 present basic duration statistics for men obtained using the alternative definition of unemployment discussed above, Using this second definition (which includes those individuals who appear to be idle --not working but able to work, not searching for a job, yet not studying or taking care of the household), yields slightly longer duration of unemployment, 5/ Although arbitrary, this assumption allows one to smcoth unemployment exit over the quarter. As alternatives we also tried simply adding 1, 1,5 and 3 months to the reported incomplete unemployment spell for each individual who exited unemployment over the course of the quarter 6/ Although the typical spell appears to be fairly short, duration is significantly longer than in the U.S., for example, In one study of unemployment dynamics, Clark and Summers (1979) found that in 1975 the mean duration of a completed unemployment spell in the U.S. was 1.6 months, and that seventy-one percent of speUs ended within one month. 7/ This is aIkely to be an underestirnate, since long spe!ls are truncated at 1i months. 9 although the patterns are fairly similar.5 Using the alternative definition of unemployment tends to slow down the exit rate from unemployment, and in particular, sharply increases the tail of the distribution. Mean duration of unemployment for males goes up to 6.4 months. The concentration of unemployment in longer spells is even more marked using this second definition: seventy-five percent of all unemployment is accounted for by spells lasting at least six months. Table 12 shows comparable duration statistics for females. Female unemployment spells appear to be substantially longer than for males. Mean duration of a completed spell for women is 7.2 months as compared to 5.7 months for men. Women's higher average unemployment rate is thus partly explained by longer duration. As a result, almost eighty percent of all female unemployment in 1991 is attributable to spells lasting at least 6 months, and forty-six percent corresponds to spells lasting at least a year (see Table 13). As was the case for men, young women tend to move out of unemployment more quickly than do older women, with a much larger proportion of the latter remaining unemployed for over a year. Finally, as in the case of males, females with secondary education appear to experience shorter unemployment spells than those with primary or post- secondary schooling. B. Proportional-Hazard Models of Unemployment Duration The duration of unemployment spells, and the impact of different variables --age, education, marital status and other household characteristics-- on said duration can be further analyzed using hazard model techniques. In this section, we use a proportional hazards model which factors the time path of the probability of escaping from unemployment (the re-employment probability) into a function of time (which is the same for all individuals) and a function of other individual-specific explanatory variables (such as age and education). Formally, we parametrize the overall hazard rate of exit from unemployment for individual i at time t, h,(t), as: hA(t) = ho(t) exp(xI P) where ho(t) is the baseline hazard at time t, x, is a vector of explanatory variables for individual i, and ' is a vector of parameters which is unknown. The estimated : coefficients reveal the elasticities of the hazard with respect to the exponential of each of the variables included in x,. We obtain estimates of 3 using maximum likelihood. We estimate separate hazards for men and women. Our vector of explanatory variables includes age, education and dummies for whether the individual has children and whether he/she is the household head. The results are presented in Table 14. The estimates for males suggest a strong effect of age on the hazard of exiting unemployment. The negative and significant coefficient on the age variable indicates that the hazard is lower, and therefore duration of unemployment longer, for B/ The results for males aged 41 and over should be corns:idered with some care since their labor force participation is likely to be mcasured with noise Many of them may have effectively retired from the formal sector yet may be sporadically active in the informal sector, without this showing up in their survey responses. 10 older workers.? The simp! -st Cox specification, which enters schooling as a continous linear variable, reveals no effect of education on the durao;on of unemployment. However, the specification with school dummies shows chat relative to those with university-level schooling, those with complete secondary education have a higher hazard and therefore shorter unemployment spells. Similarly, the results suggest a weak link between primary education and shorter unemployment duration, and between higher secondary education and shorter duration. The estimates also show that household heads have significantly higher hazards, and thus shorter unemployment spells. This finding is explained by the fact that individuals with household responsibilities have a much higher cost associated with job search. Similarly, having children is associated with a higher hazard and shorter unemployment duration. For women, the Cox estimates are much weaker, perhaps reflecting the rit: l -naller sample size. In the simplest specification, none of the explanatory variables appear to I significant effect on the hazard. When age is entered as a quadratic, however, it becomes <. ,e a.d almost- significant, indicating that the hazard decreases with age (these are the results pr- '- in the table). The continous school variable does not reveal any significant effect of education .. Lemployment duration. However, the dummies for no formal education and for complete secone -y -eakly suggest that those groups have higher hazards of exiting unemployment. Neither the househo:U iia- dummy nor the dummy for children are significant in any of the specifications. V. PERSISTENCE AND TURNOVER Previous analysis showed that the incidence of unemployment (probability of being unemployed at a given time) and to some extent also the duration of unemployment, vary according to sex, age, education and family characteristics. The active population is thus heterogeneous: certain population subgroups appear more vulnerable than others to unemployment. Policy and programs can therefore be especially designed and targeted towards them. An interesting question, which the previous analysis did not address is whether each population subgroup is homogeneous (with each member facing equal risk) or on the contrary, heterogeneous (some members facing a higher risk than others). The extreme case of heterogeneity would correspond to a situation in which the same people would be repeatedly hit by unemployment, alternating periods of unemployment with periods of employment, while others would face zero risk of being unemployed. The extreme case of homoaeneity would, on the contrary, correspond to a situation in which only a fraction of the labor force would be hit by unemployment at one point of time, but, as time goes by, an increasing portion of the labor force would end up experiencing unemployment. When the period of observation becomes sufficiently long, this proportion approximates one. This distinction, and in particular, the possibility of identifying high risk individuals or subgroups, has obvious implications for an appropriate policy design. Heterogeneity calls for more precise targeting and raises issues on the distributive impact of support programs. Methodologv and Data. 9, We tried a quadratic specificaticn for age. but the data stronoly favor the simple linear specification. 11 By allowing individuals to be followed over time, longitudinal or panel data constitute the appropriate instrument for this type of analysis and for the measurement of the degree of persistence of unemployed on specific groups or individuals, Following Mincer (1982), let us define P as the incidence of unemployment over a period of time (for example, over one, two or three years). If unemployment is repeatedly experienced by the same individuals, the incidence remains the same, whether or not measured over one, two or three year period , P, = P2 = P3. If on the contrary, the group is homogeneous and there is perfect turnover with a probability Pi = P for each individual, over any single time period, the proportion of the labor force who experiences unemployment spells will grow over time from P to an upper limit: P, max = I - (I - P)8 when the observation period reaches n-time periods. The actual comparison between the observed n- year incidence P. and the value of this upper limit P. max allows for an estimatior of the degree of persistence (or turnover) of the phenomenon. The panel data from the Mexican Urban Employment survey (ENEU) allow to follow the same individuals from the 3rd quarter of 1990 to the 3rd quarter of 1991, that is over one full year, with a snapshot every quarter. The question on unemployment unfortunately only refers to the week preceding the survey rather than to the whole three-month period. As a result, the data provide information over the five successive snapshots but there is need to correct the information gap between each of them. For this reason, we proceed in several steps: (i) We estimate the incidence of unemployment from each of the five successive quarterly surveys. An average incidence P, is calculated. It refers to a one-week observation period. (ii) We calculate the incidence observed over the five consecative surveys P,-. This measures the proportion of the labor force observed hit by unemployment at least once ( a person found unemployed in several snapshots is only counted once). (iii) We attempt to estimate the number of workers who both enter and exit unemployment between two successive surveys and therefore, escape our accounting process done at three- month intervals. The number of these workers is inferred from the analysis of duration of unemployment spells presented in the previous section. From this analysis, information is drawn on the size of each cohort entering unemployment over one month, and the proportion exiting before three months. Estimating the number of these short-term unemployed workers who escape our accounting between our different observation points allows to draw some inference on the incidence of unemployment over a three-month period and thus, correct estimate (i). (iv) Based on (iii), che incidence corresponding to a full-year period is calculated: Py. corr. Lower and upper bound estimates are calculated . Lower-bound estimates correspond to the case in which the short-term unemployed (with duration inferior to three months) who cannot be captured from a survey to the next, are repeatedly hit during, each quarter (perfect persistence or heterogeneity). The upper-bound estimate corresponds to the opposite case (perfect turnover or homogeneity): a "new" group of short-term unemployed enters each quarter. 12 (v) The degree of heterogeneity (or persistence) is measured as proposed by Mfincer (1982) by: I - X where X = (Pyr - P.J/(Py,,u - P,,). When X = 0, there is complete persistence in the unemployment experience which always affects the same individuals. Results. Results are presented separately for men and women in Tables 15 and 16. For both, estimates are presented for different age and education groups. In the case of men, we use both the standard and alternative definitions of unemployment. Column (1) shows the unemplu,ment rate corresponding to a one-week observation period; column (2) indicates the proportion of the labor force unemployed at least once over the five successive quarterly surveys; column (3) corrects this estimate to indicate a range of likely estimates for the proportion of the labor force unemployed over one year period; column (4) indicates the upper limit of P in the case of perfect homogeneity of the labor force and perfect turnover week after week; column (5) presents the value of the persistence indicator; columns (6) and (7) indicate the sample size of each cell; N refers to the number of unemployed and LF to the labor for"e. The distinction between a snapshot relative to a one-week period and an analysis covering one full year provides interesting insights. While only about 5 percent of all males are found unemployed over a given week (broader definition of unemployment) , between 18 and 20 percent will enter unemplovment over one year, ie. 4 times as many. As could be expected from previous analysis, rates differ between age and education groups. The most striking result refers to the 12-20 age group: over half of youth will experience at least one period of unemployment over a year. Beyond the age of 20, the proportion decreases sharply although it remains above average until the age of 30. The effect of age is also noticeable when one considers the persistence indicator: persistence increases with age. Unemployment is thus clearly more uniformly spread among youth, especially teenagers, than among adult workers. Experience acquired in the labor market protects workers frum the risk of unemployment. However, it induces greater heterogeneity. Differences among education levels are less clear. Perisitence of unemployment appears to be higher at lower and higher levels of education, than at intermediate levels. However, the result may be biased as low educated groups are typically older. Small sample size unfortunately prevent us from measuring persistence by education levels for given age groups. Results of the analysis of persistence of unemployment with data for women are consistent with those for men. Persistence is shown to increase with age and sharp differences exist between teenagers, young and adult women. Even using the most restrictive definition of unemployment, over one third of teenage women will experience unemployment over one year. Finally, it is interesting to observe that, although unemployment rates are higher for women than for men, persistence is somewhat stronger among young men. In sum, although unemployment rates in Mexico, as measured over one week period, are low compared to what is observed in other countries, in particular industrialized countries, unemployment is experienced by a significant fraction of the population: 15,c to 20% of men and women will experience at least one spell of unemployment over a one vear period. There are sharp differences between young and adult workers. About half of teenagers will experience unemployment over one 13 year, as compared to about 10% for workers aged over 30. This characteristic of the functioning of the labor market is also observed in other Latin-American countries. In Peru, data indicate that, while the male unemployment rate observed over one week was 6% in 1985 (fairly comparable to the Mexican case), 37% of the male labor force experienced unemployment over one year. The degree of turnover is thus much stronger in Peru than in Mexico. 14 Table I UNEMPLOYMENT RATES IN URBAN AREAS BY SEX 1980-1991 TOTAL MEN WOMI cN 1980 4.68 3.83 5.90 1981 4.20 3.53 5.58 1982 4.21 3.87 4.94 1983 6.06 5.33 7.56 1984 5.57 4.85 7.03 1985 4.36 3.63 5.76 1986 4.29 3.74 5.34 1987 3.88 3.42 4.77 1988 3.54 3.03 4.51 1989 2.92 2.59 3.55 1990 2.81 2.63 3.04 1991 2.55 2.47 2.68 Jan-Jun Jan-Oct 2.75 2.62 2.97 15 Table 2 UNEMPLOYMENT RATES FOR POPULATION SUBGROUPS, 1988 URBAN AREAS (OVER 100,000 INHABITANTS) Men Women Age 12-i5 4.2 4.8 16-20 8.4 14.0 21-25 5.3 8.9 26-30 3.0 4.0 3140 1.2 3.3 41-50 1.7 3.4 51-60 1.9 2.3 61-70 2.4 4.0 Education No educ 2.1 1.8 1-5 yrs 2.1 3.8 6 yrs 2.5 5.2 7-8 yrs 4.8 5.4 9 yrs 4.7 10.6 10-12 yrs 4.1 7.9 13 + yrs 3.4 5.7 Total 3.4 6.3 Note: unemployed defined as active job seekers Source: own estimates from 1988 National Employment Survey, INEGI 16 TAB-E 3: CHARACTERISTICS OF LABOR FORCE WITHDRAWAL AND REENTRY POPULATION 12 AND OVER 1991 MEN WONMEN All Age Age All Age Age .____ < 20 20 > < 20 20 > % withdrawing from the labor force: __l from employment .05 .18 .03 .19 .25 .17 from unemployment .24 .37 .17 .53 .55 .51 % withdrawals reentering the labor force: within 3 mos. .55 .48 .62 .41 .39 .42 within 6 mos. .55 .48 .63 .4.3 .41 .43 Source: Own results from 1988 National Employment Survey, INEGI 17 Table 4 MEN: ALTERNATIVE MEASURES OF UNEMPLOYMENT 1988 Officiat Oefinition ALL joF seekers "Atternative11 (Active job seekers) Definition (Job seekers and id'a __________________________ _ _workers) Age 12-15 4.2 5.3 17.7 16-20 8.4 9.9 15.2 21-25 5.3 5.9 7.9 26-30 3.0 3.1 4.5 31-40 1.2 1.5 2.4 41-50 1.7 2.0 4.0 51-60 1.9 2.1 4.3 61-70 2.4. 3.0 3.0 Education No educ. 2.1 2.3 6.9 1-5 yrs 2.1 2.3 5.2 6 y-s 2.5 2.8 5.9 7-8 yrs 4.8 5.7 8.9 9 yrs 4.7 5.3 8.1 10-12 yrs 4.1 4.8 6.9 13 + yrs 3.4 4.0 4.8 Total 3.4 3.9 6.4 Source: own resuLts from 1988 NationaL Employment Survey, INEGI 18 TabLe 5 _________________________ DISTRIBUTION OF UNEMPLOYED BY AGE 1988 i m Mn Women Age Standard Definition ALternative Definition Standard Dofinition 12-15 4.25 10.67 2.53 16-2U 33.32 33.46 36.54 21-25 24.68 19.35 38.'4 26-30 13.33 10.46 31-40 8.80 8.97 11.71 41-50 8.01 9.48 6.84 _ 51-60 5.06 5.95 2.54 61-70 2.55 1.65 1.70 19 TabLe 6 _______________ _ RDISTRIBUTION OF UNEMPLOYED BY EDUCATION LEVEL, 1988 ____ ,___l Men Women l Years of school Standard Definition Atternative Definition Standard Definition 0 2.44 4.40 1.65 1-5 years 9.72 12.53 8.56 6 15.99 19.94 14.56 7-8 12.92 12.83 8.61 9 20.37 18.81 18.90 10-12 20.17 18.06 35.61 13 and more 18.39 13.43 12.12 20 Table 7 PROPORTION OF NEW LABOR MARKET ENTRANTS AMONG UNEMPLOYED 1983-1991 ^ YEAR UNEMPLOYED WITH WORK NEVER WORKED EXPERIENCE I 1983 100.00 70.79 29.21 1984 100.00 67.75 32.25 1985 100.00 73.18 26.82 1986 100.00 77.22 22.78 1987 100.00 75.97 24.03 1988 100.00 73.78 26.22 1989 100.00 76.79 23.21 1990 100.00 78.65 21.35 JANh -OCT 100.00 81.40 18.60 SuAvera e aCtf 16 wtnrban areas Sou.rce: 'TPb~' r~esL-Lts fromn National Urban Emptoymnent Surveys 1983-1991, INEGI 21 Table 8 * Probit Estimates of the determinants of UnerWLoyment - Mates Variable Standard Definition Alternative Definition of UnemLoyment of UnempLoyment Yrs SchooL .013 .013 .044 -.015 - .015 -.023 (4.5) (4.2) (3.5) (-6.3) (-6.1) (-2.7) Yrs School 2 -.001 .0009 (-2.2) (2.1) Age .021 -.008 -.033 -.028 -.011 -.064 (-17.9) (-5.9) (-5.3) (-32.2) (-10.8) -14.4) Age2 .0003 .0007 (4.3) (12.4) Married .542 -.496 -.732 -.63 (-16.3) (-14.0) (-27.5) ( -22.4) Cohab. -.478 -.425 -.678 -.57 (-6.4) (-5.6) (-11.7) (-9.7) North .006 .005 .025 .031 (.23) (.21) (1.18) (1.4) DF .268 .267 .179 .190 (6.42) (6.4) (5.06) (5.3) No. Obs. 43633 43633 43633 45076 45076 45076 Means: Unemp. .03 .06 Yrs. Sch. 8.1 8.1 Age 33.4 33.2 Married .58 .57 Cohab. .05 .05 Norrth .41 .41 OF .08 _ .08 Notes: T-statistics in parentheses. Yrs School = number of completed years of schooling. Unemp = dummy vari'.,Le which takes on the vaLue 1 if individual is unerployed. Married/Cohab = du.r/ variables which take on the vaLue 1 if individual is married or cohabitating with partner. North/OF = dummy variabtrs which take on the vaLue 1 if individual resides in the Distrito Federal (Mexico City) or in one of the Northern states. 22 TabLe 9: Probit Estimates of the Determinants of Uneiployment - Males ALternative Definition of Lnemcloyment (1) (2) (3) (4) (5) (6) VariabLe Age 12-20 Age 21-40 Age 41+ Sch=6 Sch 7-9 Sch 10+ School -.086 -.025 -.027 -.022 -.017 -.001 (-4.18) (-1.73) (1.73) (-2.72) (-.65) (-.08) SchooL' .006 .O0i -.002 (4.55) (1.89) (-1.95) Age -.089 -.011 -.007 -.063 -.084 -.058 (-10.17) (-3.49) (-2.07) (-10.87) (-8.30) (-5.12) Age2 .001 .001 .001 (9.00) (7.48) (4.92) Married -.494 -.752 -.452 -.594 -.66 -.690 (-5.02) (-20.21) (-7.62) (-14.04) (-10.69) (-13.76) Cohab. -.536 -.568 -.439 -.566 -.672 -.435 (-2.94) (-7.404) (-3.92) (-7.60) (-5.01) (-2.96) North .180 -.061 -.037 .104 .107 -.149 (5.13) (-1.811) (-0.75) (3.22) (2.59) (-3.61) OF .216 .121 .257 .258 .279 .033 (3.27) (2.32) (3.56) (4.17) (4.33) (0.56) No. Obs. 8469 24120 12487 20779 10561 13736 Means: _ Unemp .157 .04 .03 .05 .07 .05 School 7.52 9.27 6.?S 4.29 8.44 13.71 Age 17.24 29.59 50.91 37.07 27.76 31.44 Married .06 .62 .83 .62 .46 .59 Cohab. .02 .06 .06 .07 .04 .02 North .40 .42 .40 .40 .42 .41 DF .07 .09 .09 .06 .09 .11 Notes: T-statistics in parentheses. See notes on variabLe definitions at the bottom of TabLe 8. 23 Table 10 Probit Estimates of the Determinants of Unemployment - Females Active Job Seekers only. Variable (1) (2) (3) (4) (5) (6) (7) (8) (9) Agel2-70 Agel2-70 Agei2-70 Sch<=6 Sch7-9 SchlO+ Age 12-20 Age 21-40 Age 41 + School .013 .013 .OZ2 .064 .067 .015 .150 .036 .056 (3.39) (3.37) (4.43) (3.9) (1.4) (1.2) (2.7) (1.6) (1.9) School2 -.002 -.005 -.001 -.003 l (-3.1) (-1.6) (-0.9) (-1.5) Age -.017 -.017 -.083 -.047 -.100 -.14 1.02 -.186 -.058 (-11.4) (-10.2) (-11.0) (-4.3) (-6.4) (-8.6) (3.6) (-3.9) (-.77) Age2 .0009 .0006 .0012 .002 -.029 .002 .001 (9.4) (3.9) (5.5) (6.9) (-3.7) (3.3) (1.0) Married -.126 -.023 .149 -.009 -.115 .158 -.077 .206 (-3.2) (.55) (2.1) (-.10) (-1.8) (1.2) (-1.5) (2.2) Cohab. .082 .212 .194 .31 .229 .455 -.017 .55 (.93) (2.36) (1.5) (1.8) (1.0) (2.2) (-.13) (3.2) North -.054 -.060 .007 -.03 -.15 -.044 -.069 -1.81 (-1.5) (-1.7) (.11) (-.45) (-2.8) (-0.7) (-1.4) (-1.8) DF .334 .338 .375 .43 .26 .547 .308 .090 (7.0) (7.0) (4.2) (4.4) (3.7) (5.9) (4.7) (.72) No. Obs. 19748 19748 19748 7593 4439 7716 4170 1449 4129 Means: Unemp .043 .03 .05 .05 .oa .04 .02 Yrs.Sch. 8.6 4.1 8.4 13.0 8.3 9.6 5.9 Age 31.0 35.7 27.4 28.6 17.7 29.0 50.3 Married .33 .35 .28 .3S .05 .40 .43 Cohab. .03 .06 .03 .01 .01 .04 .04 North .40 .36 .48 .39 .44 .40 OF .10 .09 .10 .12 .08 .11 Notes: T-statistics in parentheses. See variable definitions in Table 8. 24 Table II I CtAracnrdics of CompiAted Spells of Uoemployunt: Majes Aged Tlwve and Over, 199-91 Proponiro Ramining Unemployed Cbnricteristics By Age Group By fiduetioo All Make 12-20 21-30 31-40 41+ 0-6 7-9 r 0+ I. S9andard Deinition UE I'ropodtio of spclls ending within tducc mooo .41 .38 .40 .50 .43 .44 45 .34 within six month .69 .66 .69 .79 .57 .76 .70 .58 within nine montw .81 .82 .82 .82 .75 .85 .84 .72 I'ropOrtiOO of spells li3ing ovcr a year .12 .09 .13 .10 .1S .10 .09 .16 Mean duraion of a compklied spel (months) 5.7 5.7 5.6 5.3 6.4 5.2 5 3 6.6 2. Ahcmlnvs Dernition UE P-oponiooof spells ending within dure rnonths .39 .37 .39 .45 .35 .39 .42 .34 within six "ions .61 .62 .64 .71 .43 .62 .65 .65 within nine moRio" .72 .76 .77 .74 .55 .70 .80 .69 Propornionof spelblating avcr s yea .19 .14 .15 .19 .41 .25 .12 .20 Mean duration of a cogpktp.lspel (montks) 6.4 6.1 6.0 5.9 8.4 6.7 5.8 6.8 25 Table 12: Charadensic of Compided Spdlh of Unemployment: Females Aged Twelve and Over, 1990-91 __________ PrUPpouti- Reiuins Un-ployed Chanicteritic _ _ By Age Gmup By Edwatioo All Fema 12-20 21-30 31+ 0-6 7-9 10+ 1. Standard Definition UE Proportimi of apell endirg withio thre mondu .27 131 .23 .24 .25 .33 .26 within six mnth. .54 .51 .56 .57 .47 .66 .52 within nine mons .80 -84 .65 .71 75 .75 .67 Proportion of "liel hating ovcr a yeair .22 14 .31 .28 .19 .19 .25 Mcan dueation of * compicted spel (months) 7.2 7.0 7.4 7.1 7.5 6.2 7.4 .~~~~~~~~~~~~~~~ 26 Table 13a Proportion of Unemploymmnt By Laofth at Splil Mile Fousi LI*iOof Spell 3 or MGMe .91 . W .96 6 or mome .68 .75 .78 9 or inre .41 .59 u60 12 or more .30 .43 .46 Cohano (1) is using standard dertnition oft unanployed. column (2) uam alternative definition which inchdes ~idl worteru; cohw,.j. (3) usa standarti definition. 27 Table 14 Proportional-Hazards Nlodel Estimates of Unemployment Duration Variable Males Females Age -.030 -.027 -.086 -.067 (-4.654) (-4.050) (-1.397) (-1.051) Age 2 .001 .001 (1.251) (0.975) Yrs. School .006 -.005 (0.476) (-0.189) School Dummies. No Formnal .095 1.894 (0.316) (1.588) Inc. Prirnary -.104 .229 (-0.527) (0.470) Primary .214 .095 (1.202) (0.330) Inc. Secondary .083 .061 (0.395) (0.192) Secondary .334 .347 (1.900) (1.442) High Secondary .257 .033 (1.413) (0.132) University Household Head .414 .420 .505 .425 (2.590) (2.587) (1.281) (1.012) With Children .071 .076 -.024 -.081 (2.197) (2.222) (-0.267) (-0.844) Chi-Square 24.64 33.35 4.20 8.14 Number Obs. 439 439 152 152 T-Statistics in parentheses. See variable definitions in Table 8. Household head = dummy variable which takes or. the value I if individual is household head. With children = similar dummy variable for having children. School dummies include no formal education, incomplete primary (1-5 years school), primary (6 years school), incomplete secondary (7-8 years school), secondary (9 years school), higher secondary (10-12 years school) and university (13 or more years of school). 28 Table 15 1'ersistence and rurnover, Males Pw" P| p | p,corr. p,.max I-X N LF Standlard UF Def All Males 022 .093 .097--110 .69 .88 614 6616 Age 12-20 055 .225 236-.267 .95 .78 256 1138 21-30 026 .106 .112-.128 .75 .87 204 1918 31-40 (11 .044 048 .057 .44 .90 70 1578 41 + .010 .042 .042 .41 .92 64 1982 EFltdc. <=6 01 068 .073-087 .57 .88 189 2786 7-9 (33 .135 .140 156 .82 .85 229 1696 10+ _023 .092 .095-.103 .70 89 196 2135 Allernative UE Def All Males .050 .174 .182-.205 .93 .84 1186 6810 Age 12-20 21-30 .144 .474 .504-.579 1.0 .53 595 1255 3140 .042 .155 .160-177 .89 .85 302 195! 41+ .020 .070 .074-.085 .65 .91 112 1593 .024 .088 .090-.096 .72 .90 177 2011 Educ. <=6 7-9 .049 .242 .A65-.190 .92 .85 451 2878 10-9 .069 .242 .251-279 .98 .78 427 1762 .039 .142 .147-.160 .87 .86 308 2170 29 Table 16 I'ersistence and 'l'nirnover, Femaks P.& P. P,,pc P,r I-A N LF Standard UE def All females 033 .135 .140-.152 .82 .86 431 3182 Age 12-20 .074 .304 .319-.363 .98 .71 207 681 21-30 .034 .137 .140-.149 .83 .86 147 1070 31-40 .015 .064 .064 .54 .91 47 740 41+ .010 .043 .043 .41 .92 30 691 l Edtic. < =6 .020 .090 .092-097 .65 .88 100 1114 7-9 .041 .177 .182-.199 .89 .82 127 719 10+ .039 .151 .156-169 .87 .85 204 1350 Policy Research Working Paper Series Contact Title Author Date for paper WPS1208 Primary School Achievement in Levi M. Nyagura October 1993 I. Conachy English and Mathematics irn Abby Riddell 33669 Zimbabwe: A Multi-Level Analysis WPS1209 Should East Asia Go Regional? Arvind Panagariya October 1993 D. Ballantyne No, No, and Maybe 37947 WPS1210 The Taxation of Natural Resourcos: Robin Boadway October 1993 C. Jones Principles and Policy Issues Frank Flatters 37699 WPS1211 Savings-Investment Correlations Nlandu Mamingi October 1993 R. Vo and Capital Mobility in Developing Countries 31017 WPS1212 The Links between Economic Policy Ravi Kanbur October 1993 P. Attipoe and Research: Three Examples from 526-3003 Ghana and Some General Thoughts WPS1213 Japanese Foreign Direct Investment: Kwang W. Jun November 1993 S. King-Watson Recent Trends, Determinants, and Frank Sader 33730 Prospects Haruo Horaguchi Hyuntai Kwak WPS1214 Trad-, Aid, and Investmen: in Sub- Ishrat Husain November 1993 M. Youssef Saharan Africa 34637 WPS1215 How Much Do Distortions Affect William Easterly November 1993 R. Martin Growth9 39065 WPS1216 Regulation, Institutions, and Alice Hill November 1993 D. Evans Commitment: Privatlzai;on and Manuel Angel Abdala 38526 Regulation in the Argentine Telecommunications Sector WPS1217 Un,tary versus Collective Modeis Pierre-Arndre Chiappori November 1993 P. Attipoe of the Household: 1Time to Shift the Lawrence Haddad 526-3002 Burden of Proof? John Hoddiri-ott Ravi Kanbur WPS1218 Implementation of Trade Reform in John Nash November 1993 D. Ballantyne Sub Saharan Africa: How Much Heat 37947 and How Much Light? WPS1219 Decentralizing Water Resource K. William Easter November 1993 M.Wu Management: Economic Incentives, Robert R. Hearne 30480 Accountability, and Assurance WPS1220 Developing Countries and the Bernard Hoekman November 1993 L. O'Connor Uruguay Round: Negotiations on 37009 Services Policy Research Working Paper Series Contact Title Author Date for paper WPS1221 Does Research and Development Nancy Birdsall November 1993 S. Rajan Contribute to Economic Growth Changyorig Rhee 33747 in Developing Countries? WPS1222 Trade Reform in Ten Sub-Sahirari Fauze. jrout an November 1993 S. Fallon Countries: Achievements and Failures 38009 WPS1223 How Robust Is a Poverty Profile? Martin Ravallon November 1993 P. Cook Benu Bidani 33902 WPS1224 Devaluation in Low-inflation Miguel A. Kiguel November 1993 R. Luz Economies Nita Gnei 39059 WPS1225 Intra-Sub-Saharan African Trade: Faezeh Foroutan November 1993 S. Fa!lon Is It Too Little? Lant Pritchett 38009 WPS1226 Forecasting Volatility in Commodity Kenneth F. Kroner Noverrber 1993 F. Hatab Markets Devin P. Kneafsey 35835 Stijn Claessens WPS1227 Designing Water Institutions: Mane Le:gh Livingston December 1993 C. Spoone- Market Failures and Institutional 30464 Response WPS1228 Competition. Competition Policy Bernard M. iloekman December 1993 L. O'Connor rand the GATT Petros C. Mavroidis 37009 WPS1229 The Structure, Regulation, and E. P. Da.ys December 1993 P. Infante Perlormance of Pension Funds in 37642 Nine Industrial Countries WPS1230 Unemployrnent In Mexico: Its Ana Reverg7m December 1993 R. Stephen Characteristics and Determinants M che:.e R.Do:ud 37040