Gender Differences in Unemployment and Underemployment in Kenyan
Vuluku, Gayline M
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Unemployment and underemployment in Kenya have been increasing as the working age population increases. The economy has not been able to create adequate jobs to absorb the labour market entrants in gainful employment. This study analysed the determinants of open unemployment and underemployment by gender. The gender gap in both these labour market outcomes was decomposed to identify factors that explain it. A probit regression model for each outcome was estimated separately for male and female using data drawn from the Kenya Integrated Household Labour Survey 2005/06. The descriptive statistics indicate that under employment and unemployment was higher among female than male. The probit regression shows that after controlling for differences in personal and household characteristics, the probability of being unemployed or underemployed was still higher among females. Both household and individual characteristics such as human capital, marital status, region of residence, non-labour income and age were found to be significant determinants of unemployment and underemployment. The decomposition results show that 88.8% of the unemployment gap between women and men is accounted for by difference in individual and household characteristics while 11.2% is accounted for by difference in the coefficients. In addition, 5.4% of the underemployment gap is accounted for by individual and household characteristics and 94.6% is by difference in the coefficients. The key factors determining this gap are region of residence, age, education level, marital status and effects of shocks. Policy makers are bound to benefit from this study in making policies that bridge the gap between men and women in the labour market.
University of Nairobi
SubjectUnemployment and Underemployment
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