Effects of the Minimum Wage (MW) on Income Inequality: Systematic Review and Analysis of the Spanish Case
Abstract
:1. Introduction
2. Systematic Review of Empirical Studies on the Effects of MW on Inequality and Poverty
2.1. Systematic Review Up to 2019
2.2. Systematic Review from 2020 to 2024
3. The Spanish Case
4. An Analysis of the Impact of the MW on Income Inequality: In Spain, for the 2019 Increase
Multiple Regression Model
- Case 1: The variable X2 takes on a value of 1 when the person has a gross annual income equal to or below the 2019 minimum wage (i.e., belongs to treatment group 1) and a value of 0 when the person belongs to the control group (persons with a gross annual income equal to or above 1.5 times the median income in 2019).
- Case 2: The variable X2 takes on a value of 1 when the person has a gross annual income above the 2019 minimum wage but equal to or below two-thirds of the 2019 median income (treatment group 2), and a value of 0 when the person belongs to the control group, i.e., with an income equal to or above 1.5 times the 2019 median income.
- Case 3: The variable X2 takes on a value of 1 when the person has a gross annual income of more than two-thirds and less than 1.5 times the median income in 2019 (treatment group 3), and a value of 0 when the person belongs to the control group.
Model (1) | Model (2) | |
---|---|---|
Year | 0.021 ** (0.014) | 0.020 ** (0.013) |
Treatment 1 | −1.062 *** (0.016) | −1.024 *** (0.017) |
Treatment 1 × year | 0.187 *** (0.022) | 0.188 *** (0.022) |
Gender | −0.023 *** (0.011) | |
Living as a couple | −0.035 *** (0.012) | |
Level of education | 0.062 *** (0.012) | |
Adjusted R2 (a) | 0.913 | 0.917 |
Durbin–Watson | 1.854 | |
Standard error | 0.20812 | 0.20349 |
- The income of individuals with a gross annual income equal to or below the MW was 64.1% to 65.5% lower than the income of the highest gross income group, the control group.
- The gross annual income of all individuals (regardless of whether they belong to treatment group 1 or the control group) increased by around 2% in real terms after the 2019 minimum wage increase.
- The increase in the minimum wage led to an increase of 20.5% to 20.7% in the income of those with an income at or below the minimum wage.
Model (1) | Model (2) | |
---|---|---|
Year | 0.031 *** (0.010) | 0.030 *** (0.010) |
Treatment 2 | −0.982 *** (0.012) | −0.954 *** (0.012) |
Treatment 2 × year | 0.036 ** (0.017) | 0.037 ** (0.016) |
Gender | −0.019 ** (0.008) | |
Living as a couple | −0.024 *** (0.009) | |
Level of education | 0.052 *** (0.009) | |
Adjusted R2 (a) | 0.926 | 0.928 |
Standard error | 0.14959 | 0.14732 |
Durbin–Watson | 1.937 |
- The income of individuals belonging to this treatment group was between 61.5% and 62.6%% lower than the income of the highest income group.
- The income of individuals (in both treatment and control groups) increased by around 3% between 2018 and 2019.
- The income of the group of people in treatment group 2 increased by between 3.7% and 3.8% between 2018 and 2019. This is a smaller increase than for the group of people with incomes below the minimum wage, but significant for such low-income levels (considering the income thresholds for the groups shown in Table 2).
Model (1) | Model (2) | |
---|---|---|
Year | 0.041 ** (0.015) | 0.039 ** (0.014) |
Treatment 3 | −0.786 *** (0.012) | −0.731 *** (0.012) |
Treatment 3 × year | 0.019 (0.017) | 0.018 (0.016) |
Gender | −0.063 ** (0.008) | |
Living as a couple | −0.034 *** (0.009) | |
Level of education | 0.182 *** (0.008) | |
Adjusted R2 (a) | 0.607 | 0.636 |
Standard error | 0.22425 | 0.21582 |
Durbin–Watson | 1.969 |
- The gross annual income of people with medium-high incomes stood at between 51.9% and 54.3% of the income of the control group. Thus, the analysis of β2 coefficients shows, in the different scenarios, the large difference in income between all groups and the high-income group.
- The income of individuals (in both treatment 3 group and control group) increased by around 4% between 2018 and 2019.
- The differences between the genders were more pronounced the higher the income level.
- Individuals living with a partner had higher incomes than those living alone.
- In higher income groups, tertiary education had a greater impact on income than in lower income groups.
5. Discussion of the Results
Impact on Inequality
6. Practical Implications
7. Conclusions
Practical Recommendations
- Minimum wage coverage needs to be universal so that it does not leave out any vulnerable groups such as domestic services, the agricultural sector, or the hotel and catering industry.
- The level or amount of the minimum wage, i.e., too low is not enough to overcome poverty and too high can affect employment and fulfilment, must be just high enough to allow for a dignified life.
- The level of compliance must be adequate, although it will in any case affect if compliance is very low, when it will not have as much of a positive effect.
- There should be a mechanism for automatic updating of the minimum wage to avoid the progressive loss of its purchasing power, as recommended by the Directive EU 2022.
- For the Spanish case, it is proposed to re-link the IPREM to the minimum wage in order to really have a significant effect on transfers aimed at eliminating poverty.
- Finally, a permanent and independent minimum wage Monitoring Commission, along the lines of those that exist in Germany or the UK, should be set up.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Systematic Review of the Effects of the MW on Income Inequality and Poverty (Following the PRISMA 2020 Methodology): Summary Report
Summary of the Procedure Used in the Search and Systematic Screening: Bias Analysis
- Stage 1. General search
- Stage 2. Screening and Selection of reference period
Appendix B
Reference | Period | Objective | Treatment Group | Control Group | Place | Methodology | Data Sources Used | Results |
---|---|---|---|---|---|---|---|---|
(Bossler and Schank 2023) | 2011–2017 | Wage inequality | High impact regions | Low impact regions | Germany | DD. by quantile-Card 1992 | IEB-Administrative-Individual data | 12% MW-induced wage increase at the 5th percentile; 21% at the 20th percentile: 2% at the 50th percentile. Null effect beyond the median. |
(Burauel et al. 2020) | 2010–2016 | Wages and income | Wage < MW (8.5) | 8.5 ≤ Wage < 10 | Germany | DTADD | SOEP-Survey-Individual data | MW induced wage increase 6.5%. Induced monthly income increase of 6.6%. |
(Caliendo et al. 2023) | 2013–2018 | Wages | High impact regions | Low impact regions | Germany | DD. by quantile-Card 1992 | SOEP-Survey-Individual data | 9% in 2015 and 21% between 2016 and 2018 in the first quintile. |
(Derenoncourt and Montialoux 2021) | 1967 | Racial inequality | Average annual earnings of workers covered in 1967 | Average annual earnings of workers covered before 1967 | USA | DD | Industry wage reports BLS-Survey-Wage distributions and individual data | The expansion of the minimum wage in 1967 can explain more than 20% of the reduction in the racial income gap during the civil rights era. |
(Forsythe 2023) | 2011–2018 | Wage and occupational distribution | States that increased their MW in 2009–2016 | States that did not increase their MW in 2009–2016 | USA | DD | OEWSP- Surveys-Establishment level | Overall wage inequality decreases within establishments after minimum wage increases. |
(Frank 2021) | 1977–2011 | Indirect effects high income | High impact states | Low impact states | USA | DD | IRS Tax-Administrative-Individual data | There is a causal relationship between declining real MW and rising inequality. |
(Ohlert 2023) | 2014–2015 | Gender inequality | Companies with at least one employee earning less than MW. | Companies without employees with less than MW | Germany | DD | VSE 2014 and VE 2015-Surveys-Companies | Significant reduction in the gender pay gap |
(Pérez 2020) | 1996–2000 | Formal and informal wages | High impact city-industry blocks | Low impact city-industry blocks | Colombia | DD-Card 1992 | ENH-Survey-Individual data | Formal wage growth > informal. Induced wage growth (formal) 3%. |
(Sotomayor 2021) | 1995–2015 | Inequality and poverty | Treatment region Río de Janeiro | Control region São Paulo | Brazil | DD-Card 1992 | PMEs-Surveys-Household data | Poverty and income inequality fall, on average, by 2.8% and 2.4%. The effects fade over time. |
(Beccaria et al. 2020) | 2002–2015 | Negotiated wages | No | No | Argentina | Descriptive | EPH-Survey-Individual data | Without significant effect on the process of reducing the gap between negotiated wage rates. |
(Cho and Yang 2021) | 2010–2020 | Gender inequality | No | No | Korea | Descriptive | Sample in the Korean stock market | MW reduces the gender pay gap. |
(Laporšek et al. 2021 ) | 2005–2015 | Wage inequality | No | No | Slovenia | Descriptive | SURS-Administra-tive-Individual data | MW reduces wage inequality. The effect was greater for women, young people, and workers with a lower level of education or low occupation. |
(Alinaghi et al. 2020) | 2012–2013 | Inequality | No | No | N. Zealand | Microsimulation | HES-Survey-Individual data | Small effect. |
(Backhaus and Müller 2023) | 2012–2016 | Inequality Household | No | No | Germany | Descriptive/simulation | SOEP-Survey-Individual and household data | Substantial impact on the lower end of the wage distribution, but not on poverty. |
(Engbom and Moser 2022) | 1996–2012 | Infant mortality | No | No | Brazil | Labour market equilibrium model | The MW increase represents 45% of a large fall in income inequality during 1996 to 2012. | |
(Grünberger et al. 2021) | 2017 | Inequality and poverty | No | No | European Union | Microsimulation-EUROMOD | EU-SILC-surveys-Individual data | MW increases can significantly reduce in-work poverty, wage inequality, and the pay gap between men and women. |
(Long 2022) | 2014–2017 | Inequality and income | No | No | USA (Seatle) | Simulation-Synthetic control | SWESD-Administrative-Individual data | Local minimum wage laws are unlikely to substantially reduce income inequality. |
(Fortin et al. 2021) | 1979 a 2017 | Indirect effects on wage inequality | No | No | USA | Regression | CPS-Survey-Individual data | Indirect effects increase the explanatory power of the decline in MW by up to two-thirds of the increase in inequality at the lower end of the female wage distribution. |
(Sefil-Tansever and Yılmaz 2024 ) | 2004–2020 | Income inequality | No | No | Turkey | Regression | HLFS-Survey-Individual data | Significant reduction in Income inequality. |
(Bakis and Polat 2023) | 2002–2019 | Wage inequality | No | No | Turkey | Regression (semiparametric decomposition analysis) | HLFS-Survey-Individual data | Significant reduction in wage inequality. |
(Bassier and Ranchhod 2024) | 2010–2014 | Income and poverty. Agricultural | No | No | South Africa | Regression | QSWP-Survey-Individual data | Farmworkers were 7% less likely to have household income per person below the poverty line. |
(Chao et al. 2022) | 2005–2015 | Wage inequality | No | No | 43 Countries | Regression | WDI and ILOSTAT-Aggregated data | An increase in the urban MW reduces the wage gap between skilled and unskilled workers. |
(Engelhardt and Purcell 2021) | 1981–2015 | Wage inequality | No | No | USA | Regression | CWHS/LEED-Survey/administrative-Individual data | Minimum wage increases are associated with increases in annual earnings for men in the bottom quartile, and especially in the bottom decile. |
(Herrero-Olarte and Sosa 2020) | 2002–2011 | Income inequality | No | No | South America | Regression (Random effects model) | CEDLAS-per capita income by decile-Aggregated data | MW increases the lowest wages and reduces inequality although it was minimal (due to informality). |
(Herrero-Olarte 2023) | 2007–2017 | Work market | No | No | Ecuador | Regression (Double fixed effects model) | ENEMDU-Survey-Individual data | Significant indirect effect. |
(Herrero-Olarte 2022) | 2007–2014 | Middle class | No | No | Ecuador | Regression (Double fixed effects model) | ENEMDU-Survey-Individual data | MW variations are especially related to the lower-intermediate deciles. |
(Joe and Moon 2020) | 1990–2017 | Wage inequality | No | No | OECD | Regression | OECD dataset | An increase in the MW reduces wage inequality at the bottom of the wage distribution. |
(Saboia et al. 2021) | 2012–2019 | Labor income | No | No | Brazil | Regression | PNAD-Survey-Individual data | MW increases the lowest and middle wage significant except on the income of the first two tenths of the distribution. |
(Tamkoç and Torul 2020) | 2022–2016 | Wage inequality | No | No | Turkey | Regression + Hypothetical (counterfactual experiment) | HBS and SILC-surveys-Individual data | The rapid growth of the minimum wage coincides with a decrease in wage inequality (correlation coefficient 0.54). |
(Bükey 2022) | 1987–2017 | Income inequality | No | No | Turkey | Autoregressive Distributed Lag (ARDL) | MLSS-Aggregated and individual data | A 1% increase in MW reduces the Gini coefficient by 0.061%. |
(Sari and Purwono 2021) | 2005–2018 | Income inequality | No | No | Indonesia | Long-run structural vector autoregression (SVAR) | ICSO | MW reduces income inequality and poverty. |
Appendix C
Test 1. Treatment group: people with incomes equal to or below the MW; control group: the rest of the target population. | ||||
Non-Stand Coef. | Stand. Coef. | t | p | |
Constant | 10.03 | 938.959 | 0.000 | |
β1 | 0.052 | 0.050 | 4.501 | 0.000 |
β2 | −1.23 | −0.641 | −43.578 | 0.000 |
β3 | 0.302 | 0.110 | 7.382 | 0.000 |
Adjusted R-Squared | 0.472 | |||
Durbin–Watson | 0.938 | |||
Test 2. Treatment group: people with incomes at or below the MW; control group: people in the target population with incomes above two-thirds of the median income in 2019. | ||||
Non-Stand Coef. | Stand. Coef. | t | p | |
Constant | 10.138 | 936.991 | 0.000 | |
β1 | 0.020 | 0.019 | 1.709 | 0.000 |
β2 | −1.151 | −0.784 | −52.805 | 0.000 |
β3 | 0.441 | 0.222 | 14.481 | 0.000 |
Adjusted R-Squared | 0.553 | |||
Durbin–Watson | 1.218 | |||
Dependent variable. Log of income.The same tests have been applied to treatment variables 2 and 3 and the results have been similar. coefficients of the independent variable year × treatment. |
Case 1 | Case 2 | Case 3 | |
---|---|---|---|
Variable “Year” | |||
Model (1) | 0.021→2.12% (2.11%) | 0.031→3.15% (3.14%) | 0.041→4.19% (4.17%) |
Model (2) | 0.020→2.01% (2.02%) | 0.03→3.05% (3.04%) | 0.039→3.98% (3.97%) |
Variable “Treatment” | |||
Model (1) | −1.062→−65.42% (-65.44%) | −0.982→−62.54% (−62.55%) | −0.786→−54.43% (−54.44%) |
Model (2) | −1.024→−64.08% (−64.10%) | −0.954→−61.48% (−61.49%) | −0.731→−51.86% (−51.86) |
Variable “Treatment xYear” | |||
Model (1) | 0.187→20.56% (20.54%) | 0.036→3.67% (3.65%) | 0.019→1.92% (1.90%) |
Model (2) | 0.188→20.68% (20.66%) | 0.037→3.77% (3.76) | 0.018→1.82% (1.80%) |
Variable “Gender” | |||
Model (2) | −0.023→−2.27% (−2.28%) | −0.019→−1.88% (−1.89%) | −0.063→−6.11% (−6.11%) |
Var. “Living as a couple” | |||
Model (2) | −0.035→−3.44% (−3.45%) | −0.024→−2.37% (−2.38%) | −0.034→−3.34% (−3.35%) |
Variable “Education” | |||
Model (2) | 0.062→6.40% (6.39%) | 0.052→5.34% (5.33%) | 0.182→19.96% (19.96%) |
1 | The first minimum wage legislation was enacted in the Australian state of Victoria in 1890, following major workers’ demands and demonstrations, and at the national level, in New Zealand in 1894. The International Labour Office (ILO) has paid particular attention to this issue since its inception. Indeed, the preamble to its 1919 Constitution stressed the importance of the urgent improvement of working conditions and emphasised the need to ensure “an adequate living wage”. |
2 | Lowered from the previous version which set it at 68%. Directive 2022/2041 (Art. 5.4) lowers it again to 60% of the median gross wage or 50% of the average gross wage and transforms it into a mere recommendation. |
3 | In any case, the articles found for the pre-2020 stage were reviewed using the same procedure as for the 2020–2024 period, although only at abstract level in case there were any interesting results not referenced in the aforementioned reviews. A total of 153 empirical articles were found, of which 14 were rejected for not providing specific evidence and 57 for not being related to the topic under analysis, leaving a total of 34. The results of all these studies have been included in the previous reviews and are included in the present one. |
4 | Yet, four technical works have been found by other means, as discussed below. |
5 | As in (Grünberger et al. 2021) by applying simulation. |
6 | Alinaghi et al. (2020), using microsimulation methodology, found that an increase in the minimum wage may have a more substantial effect on some measures against poverty for single-parent employed families in New Zealand. |
7 | The “market” Gini index, i.e., before taking account of taxes and social transfers, has been used to better illustrate the relationship with the increase in MW, without affecting other measures of inequality reduction. |
8 | The problem with the so-called “grey literature” (institutional) is that they are commissioned technical works that do not usually address conceptual, theoretical, and methodological issues. Moreover, they do not usually undergo external evaluations that are able to verify the methodological robustness of the analysis, so that their results can hardly count as scientific evidence. In any case, the results are analysed in order to verify the results. The following is a list of the results found: Instituto de Estudios Fiscales (Arranz Muñoz and García-Serrano 2023; Eurofound 2022; CAASMI 2021, 2022). |
9 | The classification of the target population by income level is based on the definitions used by the OECD for the calculation of wage levels and the establishment of high and low wage incidence rates in the Employment Outlook report. Available at: https://data.oecd.org/earnwage/wage-levels.htm (accessed on 30 April 2024). |
10 | According to the Spanish CIS, the Centre for Sociological Research, 71% of Spaniards were in favour or very much in favour of the measure. |
11 | This is what has been recently done with pensions is Spain, which are almost automatically updated. |
12 | Here are the links to the most relevant documents for applying this methodology: Elaboration of the Protocol: https://www.bmj.com/content/349/bmj.G7647 (accessed on 3 April 2024); full checklist: https://prisma.shinyapps.io/checklist/ (accessed on 3 April 2024); flow diagram: https://www.prisma-statement.org/prisma-2020-flow-diagram (accessed on 3 April 2024); and explanatory guidance for conducting the systematic review: https://www.bmj.com/content/372/bmj.n160?ijkey=f8955c1394a4fda7939b8b197f23c8b4e3ef260e&keytype2=tf_ipsecsha (accessed on 3 April 2024). |
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Reference | Period | Objective | Treatment Group | Control Group | Place | Methodology | Data Sources | Results |
---|---|---|---|---|---|---|---|---|
(Bossler and Schank 2023) | 2011–2017 | Wage inequality | High impact regions | Low impact regions | Germany | DD. by quantile-Card 1992 | IEB-Administrative-Individual data | 12% MW-induced wage increase at the 5th percentile; 21% at the 20th percentile: 2% at the 50th percentile. Null effect beyond the median. |
(Burauel et al. 2020) | 2010–2016 | Wages and income | Wage < MW (8.5) | 8.5 ≤ Wage < 10 | Germany | DTADD | SOEP-Survey-Individual data | MW induced wage increase 6.5%. Induced monthly income increase of 6.6%. |
(Caliendo et al. 2023) | 2013–2018 | Wages | High impact regions | Low impact regions | Germany | DD. by quantile-Card 1992 | SOEP-Survey-Individual data | 9% in 2015 and 21% between 2016 and 2018 in the first quintile. |
(Derenoncourt and Montialoux 2021) | 1967 | Racial inequality | Average annual earnings of workers covered in 1967 | Average annual earnings of workers covered before 1967 | USA | DD | Industry wage reports BLS-Survey-Wage distributions and individual data | The expansion of the minimum wage in 1967 can explain more than 20% of the reduction in the racial income gap during the civil rights era. |
(Forsythe 2023) | 2011–2018 | Wage and occupational distribution | States that increased their MW in 2009–2016 | States that did not increase their MW in 2009–2016 | USA | DD | OEWSP-Surveys-Establishment level | Overall wage inequality decreases within establishments after minimum wage increases. |
(Frank 2021) | 1977–2011 | Indirect effects high income | High impact states | Low impact states | USA | DD | IRS Tax-Administrative-Individual data | There is a causal relationship between declining real MW and rising inequality. |
(Ohlert 2023) | 2014–2015 | Gender inequality | Companies with at least one employee earning less than MW. | Companies without employees with less than MW | Germany | DD | VSE 2014 and VE 2015-Surveys-Companies | Significant reduction in the gender pay gap |
(Pérez 2020) | 1996–2000 | Formal and informal wages | High impact city-industry blocks | Low impact city-industry blocks | Colombia | DD-Card 1992 | ENH-Survey-Individual data | Formal wage growth > informal. Induced wage growth (formal) 3%. |
(Sotomayor 2021) | 1995–2015 | Inequality and poverty | Treatment region Río de Janeiro | Control region São Paulo | Brazil | DD-Card 1992 | PMEs-Surveys-Household data | Poverty and income inequality fall, on average, by 2.8% and 2.4%. The effects fade over time. |
Minimum Wage | 12,600 |
Median income | 24,667.20 |
2/3 median | 16,444.80 |
1.5 median | 37,000.80 |
Number | Percentage | |
---|---|---|
Total sample | 2344 | 100% |
Treatment group 1 | 316 | 13.5% |
Treatment group 2 | 260 | 11.1% |
Treatment group 3 | 1297 | 55.3% |
Control group | 473 | 20.1% |
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de Paz-Báñez, M.A.; Sánchez-López, C.; Asensio-Coto, M.J. Effects of the Minimum Wage (MW) on Income Inequality: Systematic Review and Analysis of the Spanish Case. Economies 2024, 12, 223. https://doi.org/10.3390/economies12090223
de Paz-Báñez MA, Sánchez-López C, Asensio-Coto MJ. Effects of the Minimum Wage (MW) on Income Inequality: Systematic Review and Analysis of the Spanish Case. Economies. 2024; 12(9):223. https://doi.org/10.3390/economies12090223
Chicago/Turabian Stylede Paz-Báñez, Manuela A., Celia Sánchez-López, and María José Asensio-Coto. 2024. "Effects of the Minimum Wage (MW) on Income Inequality: Systematic Review and Analysis of the Spanish Case" Economies 12, no. 9: 223. https://doi.org/10.3390/economies12090223
APA Stylede Paz-Báñez, M. A., Sánchez-López, C., & Asensio-Coto, M. J. (2024). Effects of the Minimum Wage (MW) on Income Inequality: Systematic Review and Analysis of the Spanish Case. Economies, 12(9), 223. https://doi.org/10.3390/economies12090223