Modeling the Employment Rate in Russia: a Spatial-Econometric Approach
DOI:
https://doi.org/10.17059/2018-4-25Keywords:
employment, labor market, regional data, spatial effects, spatial models, labor policies, development policiesAbstract
The purpose of this study is to identify factors that affect the level of employment in Russian regions. However, Russia is not a homogeneous country, and this effect may not be the same for all regions. That is why we split the regions of Russia into three groups, depending on the state of the labor market in this and neighboring regions. The HH (high-high) group comprises regions with a favorable situation in their labor markets, and which are also surrounded mostly by prosperous regions. Two groups of regions with a less favorable situation are located respectively in the south of Russia (LL1, low-low group 1) and southern Siberia and Zabaikalye (LL2, low-low group 2). We considered the twelve-year period from 2005 to 2016. As explanatory variables, we used variables for the attractiveness of the region, demographic characteristics of the region, and the degree of diversity of employees by economic activities. We tested hypotheses about differences in 1) the spatial effects and 2) the impact of the various explanatory variables for these groups of variables. To test our main hypotheses, we used spatial regression dynamic models estimated with the help of the generalized method of moments. Both main hypotheses received empirical confirmation. Spatial effects were different. The regions of the LL2 group are not affected by the situation in other local markets; regions of LL1 and HH groups are affected by the rest of Russia’s regions, and the extent of this influence decreases with the increase in geographical distance between regions. Moreover, the regions of the LL1 group compete with neighboring regions: if the situation in one of them improves, then it draws on the resources of the others. Regarding the impact of the explanatory variables, the “group effect” was revealed for the variables: share of urban population, net migration rate, shares of people below and above working age, share of people with higher education. Our results can favor the better design of national and regional policies to improve labor market performance in Russia based on the heterogeneity of the Russian regions.References
Oschepkov, A. & Kapelyushnikov, R. (2015). Regionalnyye rynki truda: 15 let razliehiy [Regional labor markets: 15 years of differences]. Higher School of Economics. WP3 series "Problems of the labor market". (In Russ.)
Caroleo, F.E. & Pastore, F. (Eds.) (2010). The labor market impact of the EU enlargement. Berlin: Springer, 342. doi. org/10.1007/978-3-7908-2164-2_2.
Mussida, C. & Pastore, F. (Eds.) (2015). Geographical Labor Market Imbalances. AIEL Series in Labor Economics, Berlin and Heidelberg, Springer, 370. Retrieved from: https://econpapers.repec.org/RePEc:ail:labook:08.
Dolton, P., Bondibene, C. R. & Stops, M. (2015). Identifying the employment effect of invoking and changing the minimum wage: A spatial analysis of the UK. Labor Economics, 37, 54-76. doi.org/10.1016/j.labeco.2015.09.002. Retrieved from: https:// s100.copyright.com/AppDispatchServlet?publisherName=ELS&contentID=S0927537115001062&orderBeanReset=true.
Vega, S. H. & Elhorst, J. P. (2016). A regional unemployment model simultaneously account ing for serial dynamics, spatial dependence and common factors. Regional Science and Urban Economics, бо, 85-95. doi.org/10.1016/j.regsciurbeco.2016.07.002. Retrieved from: https://s100.copyright.com/ AppDispatchServlet?publisherName=ELS&contentID=S0166046216300862&orderBeanReset=true.
Manning, A. & Petrongolo, B. (2017). How local are labor markets? Evidence from a spatial job search model. American Economic Review, 107(10), 2877-2907. doi: 10.1257/aer.20131026.
Head, K. & Mayer, T. (2006). Regional wage and employment responses to market potential in the EU. Regional Science and Urban Economics, 36(5), 573-594. doi.org/10.1016/j.regsciurbeco.2006.06.002.
Ketterer, T. D. & Rodriguez-Pose, A. (2016). Institutions vs.‘first-naturegeography: What drives economic growth in Europe's regions? Papers in Regional Science. doi 10.1111/pirs.12237.
Huber, P. (2007). Regional labor market developments in transition: A survey of the empirical literature. The European Journal of Comparative Economics, 4(2), 263-298.
Bah, E. & Brada, J. (2014). Labor Markets in the Transition Economies: An Overview. The European Journal of Comparative Economics, 11(1), 3-53.
Vakulenko, E. S. & Gurvich, E. T. (2016). Gibkost realnoy zarabotannoy platy v Rossii: sravnitelnyy analiz [Real Wage Flexibility in Russia: Comparative Analysis]. Zhurnal novoy ekonomicheskoy assotsiatsii [Journal of the New Economic Association], 3(31), 67-92. (In Russ.)
Kapelyushnikov, R., Kuznetsov, A., & Kuznetsova, O. (2012). The role of the informal sector, flexible working time and pay in the Russian labor market model. Post-communist economies, 24(2), 177-190. doi.org/10.1080/14631377.2012.6 75154.
Solanko, L. (2008). Unequal fortunes: a note on income convergence across Russian regions. Post-Communist Economies, 20(3), 287-301. https://doi.org/10.1080/14631370802281399.
Ledyaeva, S., & Linden, M. (2008). Determinants of Economic Growth: Empirical Evidence from Russian Regions. European Journal of Comparative Economics, 5(1), 87-105.
Kholodilin, K. A., Oshchepkov, A. & Siliverstovs, B. (2012). The Russian regional convergence process: Where is it leading? Eastern European Economics, 50(3), 5-26. doi.org/10.2753/EEE0012-8775500301.
Akhmedjonov, A., Lau, M. C. K., & izgi, B. B. (2013). New evidence of regional income divergence in post-reform Russia. Applied Economics, 45(18), 2675-2682. doi.org/10.1080/00036846.2012.665600.
Lehmann, H. & Silvagni, M. G. (2013). Is There Convergence of Russia's Regions? Exploring the Empirical Evidence: 1995-2010. IZA Discussion Papers, 7603. Retrieved from: http://dx.doi.org/10.2139/ssrn.2321098 (date of access: 02.10.2018).
Dolinskaya, I. (2002). Transition and Regional Inequality in Russia: Reorganization or Procrastination? IMF Working Paper, 2, 169.
Demidova, O. & Signorelli, M. (2012). Determinants of Youth Unemployment in Russian Regions. Post-Communist Economies, 2, 191-217. doi.org/10.1080/14631377.2012.675155.
Demidova, O., Marelli, E. & Signorelli, M. (2013). Spatial Effects on Youth Unemployment Rate: The Case of Eastern and Western Russian Regions. Eastern European Economics, 5, 94-124. doi.org/10.2753/EEE0012-8775510504.
Demidova, O., Marelli, E. & Signorelli, M. (2015). Youth Labor Market Performance in the Russian and Italian Region. Economic Systems, 39(1), 43-58. doi.org/10.1016/j.ecosys.2014.06.003.
Blinova, T., Markov, V. & Rusanovskiy, V. (2015). Youth unemployment in Russia: Models of interregional differentiation. Regional Formation and Development Studies, 15(1), 7-18. http://dx.doi.org/10.15181/rfds.v15i1.975.
Blinova, T., Markov, V., & Rusanovskiy, V. (2016). Empirical study of spatial differentiation of youth unemployment in Russia. Acta Oeconomica, 66(3), 507-526. doi.org/10.1556/032.2016.66.3.7.
Rusanovskiy, V. & Markov, V. (2016). Youth unemployment in Russian Regions and assessment of the economic loss. Indian Journal of Science and Technology, 9, 30. Retrieved from: http://www.indjst.org/index.php/indjst/article/view/98754 (date of access: 02.10.2018).
Danilenko, T., Demidova, O. & Signorelli, M. (2017). Unemployment Clubs in Russian Regions. Emerging Markets Finance and Trade, 54(6), 1337-1357. https://doi.org/10.1080/1540496X.2017.1281799.
Gimpelson, V. E., Zudina, A. A., Kapelyushnikov, R. I., Lukyanova, A. L., Oschepkov, A. Yu., Roshchin, S. Yu., Smirnykh, L. I., Travkin, P. V. & Sharunina, A. B. (2017). The Russian labor market: trends, institutions, structural changes. In: Gimpelson, V. E., Kapelyushnikov, R. I., Roshchin S. Yu. (Eds). Moscow: Center for Strategic Research. Retrieved from: https://lirt.hse.ru/data/2017/03/21/1170068107/Doklad_trud.pdf (date of access: 02.10.2018). (In Russ.)
Arellano, M. & Bond, S. (1991). Reviewed Some Tests of Specification for Panel Data: Monte Carlo Evidence and an Application to Employment Equations. The Review of Economic Studies, 58(2), 277-297.
Lee, L. F. & Yu, J. (2010). Estimation of spatial autoregressive panel data models with fixed effects. Journal of Econometrics, 154(2), 165-185. doi.org/10.1016/j.jeconom.2009.08.001https://s100.copyright.com/ AppDispatchServlet?publisherName=ELS&contentID=S030440760900178X&orderBeanReset=true.
Greene, W. H. (2012). Econometric analysis, 7th ed. Upper Saddle River, NJ: Prentice Hall. 1188.
Crowley, S. (2016) Monotowns and the political economy of industrial restructuring in Russia. Post-Soviet Affairs, 32:5, 397-422. doi.org/10.1080/1060586X.2015.1054103.
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Copyright (c) 2018 Olga Anatolyevna Demidova, Pierluigi Daddi, Ekaterina Vladimirovna Medvedeva, Marcello Signorelli

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