1. DESCRIPCIÓN Y DIAGNÓSTICO INSTITUCIONAL
1.1 ANTECEDENTES
1.1.1 FORMACIÓN
1.1.1.3 PERFIL DEL DOCENTE
Table 4: Regions and Mean Cell Sizes for All, Salary and Formal Workers, PNAD and PME.
Source: PNAD data from 2002 to 2015 and PME data from March 2002 to February 2016. Mean cells are simple average across years for PNAD and across months for PME by region. The observations in each cell are used to estimate the percentiles that comprise the region-level panel data set. “All workers" sample comprises formal workers, informal workers and self- employed, “salary workers" sample excludes self-employed. Formal workers are defined as workers who have a legal employment contract in the reference week.
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Table 5: OLS and 2SLS Estimates between Log(p)-Log(60th) and Log(min.wage)- Log(60th) by Groups of Workers, Males.
Source: PNAD, PME and MTE data from 2002 to 2016. Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 1. For all samples, the instruments are jointly significant and pass SW (Sanderson and Windmeijer (2015)) test for weak instruments and underidentification. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 6: OLS and 2SLS Estimates between Log(p)-Log(60th) and Log(min.wage)- Log(60th) by Groups of Workers, Females.
Source: PNAD, PME and MTE data from 2002 to 2016. Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 1. For all samples, the instruments are jointly significant and pass SW (Sanderson and Windmeijer (2015)) test for weak instruments and underidentification. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 7: First Stage Estimates for 2SLS Specifications, PME.
Source: PME and MTE data from March 2002 to February 2016. The dependent variables are the log of the effective minimum wage, mw=log(min. wage)-log(60th), and its square. All regressions include time and region fixed effects, and region-specific trends. Regressions are weighted by the product between weekly working hours and PME sample weights. F-statistics and SW (Sanderson and Windmeijer (2015)) tests for underidentification and weak identification along with their associated p-values are reported. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 8: OLS estimates of the Minimum Wage Effects on Employment, Working Hours and Working Hours if Employed, Males.
Source: PME data from March 2002 to February 2016. Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 3. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 9: OLS estimates of the Minimum Wage Effects on Employment, Working Hours and Working Hours if Employed, Females.
Source: PME data from March 2002 to February 2016. Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 3. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 10: Robustness Checks: OLS and 2SLS Estimates between Log(p)-Log(60th) and Log(min.wage)-Log(60th) by Groups of Workers, for Selected Percentiles.
Source: PNAD, PME and MTE data from 2002 to 2016. The estimates in the table are obtained by adding labour supply controls to the specification in equation (3). Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 1. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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Table 11: Robustness Checks: OLS Estimates of the Minimum Wage Effects on Employment, Working Hours and Working Hours if Employed, PME 2002-2016.
Source: PME data from March 2002 to February 2016. The estimates in the table are obtained by adding labour supply controls to the specification in equation (4). Detailed information on the procedure to obtain these estimates can be found in the footnote of Table 3. Standard errors in parenthesis are clustered by region. Significant at 1 percent ***, at 5 percent ** and at 10 percent *.
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