Abstract
Motivated by the canonical (random) on-the-job search model, I measure a person’s ability to sort into higher ranked jobs by the risk ratio of job-to-job transitions to transitions into unemployment. I show that this measure possesses various desirable features. Making use of the Survey of Income and Program Participation (SIPP), I study the relation between human capital and the risk ratio of job-to-job transitions to transitions into unemployment. Formal education tends to be positively associated with this risk ratio. General experience and occupational tenure have a pronounced negative correlation with both job-to-job transitions and transitions into unemployment, leaving the risk ratio, however, mostly unaffected. In contrast, the estimates suggest that human-capital concepts that take into account the multidimensionality of skills, e.g. versatility, play a prominent role.
Acknowledgements
I thank Björn Brügemann, Carlos Carrillo-Tudela, Tewodros Dessie, Guido Friebel, Nicola Fuchs-Schündeln, Peter Funk, Pawel Gola, Marten Hillebrand, Christian Holzner, Andrey Launov, Jeremy Lise, Alexander Mosthaf, Henning Müller, Jean-Marc Robin, Sigrid Röhrs, Sonja Settele, Iryna Stewen, Denis Stijepic, Huzeyfe Torun, Reyn van Ewijk, Klaus Wälde, Peter Winker, two anonymous referees, and the participants of the Annual Conference of the Royal Economic Society (Manchester, 2015), the Annual Conference of the Search and Matching Network (Aix-en-Provence, 2015), the Annual Conference of the German Economic Association (Münster, 2015), the NASM of the Econometric Society (Philadelphia, 2016) and the Annual Conference of the European Association of Labour Economists (Ghent, 2016) for helpful comments. I gratefully acknowledge financial support from the Interdisciplinary Public Policy (IPP) Research Unit at the Johannes Gutenberg University and from the Fritz Thyssen Foundation under the grant no. 40.16.0.028WW. The usual disclaimer applies.
References
Altonji, J.G., R.A. Shakotko (1987), Do Wages Rise with Job Seniority? The Review of Economic Studies 54 (3): 437–459.10.2307/2297568Search in Google Scholar
Bagger, J., F. Fontaine, F. Postel-Vinay, J.-M. Robin (2014), Tenure, Experience, Human Capital, and Wages: A Tractable Equilibrium Search Model of Wage Dynamics. American Economic Review 104 (6): 1551–1596.10.1257/aer.104.6.1551Search in Google Scholar
Bagger, J., R. Lentz (2018, forthcoming), An Empirical Model of Wage Dispersion with Sorting. Review of Economic Studies.10.1093/restud/rdy022Search in Google Scholar
Barlevy, G. (2008), Identification of Search Models using Record Statistics. Review of Economic Studies 75 (1): 29–64.10.1111/j.1467-937X.2007.00459.xSearch in Google Scholar
Barth, E., A. Bryson, J.C. Davis, R.B. Freeman (2014), It’s Where You Work: Increases in Earnings Dispersion across Establishments and Individuals in the U.S. IZA Discussion Papers 8437, Institute for the Study of Labor (IZA).10.3386/w20447Search in Google Scholar
Becker, G.S. (1971), The Economics of Discrimination. Chicago: University of Chicago Press.10.7208/chicago/9780226041049.001.0001Search in Google Scholar
Bontemps, C., J.-M. Robin, G.J. van den Berg (2000), Equilibrium Search with Continuous Productivity Dispersion: Theory and Nonparametric Estimation. International Economic Review 41 (2): 305–358.10.1111/1468-2354.00066Search in Google Scholar
Burdett, K., C. Carrillo-Tudela, M.G. Coles (2011), Human capital accumulation and labor market equilibrium. International Economic Review 52 (3): 657–677.10.1111/j.1468-2354.2011.00644.xSearch in Google Scholar
Burdett, K., D.T. Mortensen (1998), Wage Differentials, Employer Size, and Unemployment. International Economic Review 39 (2): 257–273.10.2307/2527292Search in Google Scholar
Cahuc, P., A. Zylberberg (2004), Labor Economics. Cambridge, MA: The MIT Press.Search in Google Scholar
Card, D., J. Heining, P. Kline (2013), Workplace Heterogeneity and the Rise of West German Wage Inequality. The Quarterly Journal of Economics 128 (3): 967–1015.10.1093/qje/qjt006Search in Google Scholar
Chade, H., J. Eeckhout, L. Smith (2017), Sorting through Search and Matching Models in Economics. Journal of Economic Literature 55 (2): 493–544.10.1257/jel.20150777Search in Google Scholar
Charlot, O., B. Decreuse, P. Granier (2005), Adaptability, Productivity, and Educational Incentives in a Matching Model. European Economic Review 49 (4): 1007–1032.10.1016/j.euroecorev.2003.08.011Search in Google Scholar
Delacroix, A., S. Shi (2006), Directed Search On the Job and the Wage Ladder. International Economic Review 47 (2): 651–699.10.1111/j.1468-2354.2006.00392.xSearch in Google Scholar
Dustmann, C., C. Meghir (2005). Wages, Experience and Seniority. Review of Economic Studies 72 (1): 77–108.10.1111/0034-6527.00325Search in Google Scholar
Eeckhout, J., P. Kircher (2011), Identifying Sorting–In Theory. Review of Economic Studies 78 (3): 872–906.10.1093/restud/rdq034Search in Google Scholar
Flinn, C.J. (1986), Wages and Job Mobility of Young Workers. Journal of Political Economy 94 (3): S88–S110.10.1086/261400Search in Google Scholar
Gathmann, C., U. Schönberg (2010), How General Is Human Capital? A Task-Based Approach. Journal of Labor Economics 28 (1): 1–49.10.1086/649786Search in Google Scholar
Groes, F., P. Kircher, I. Manovskii (2015), The U-Shapes of Occupational Mobility. Review of Economic Studies 82 (2): 659–692.10.1093/restud/rdu037Search in Google Scholar
Guvenen, F., B. Kuruscu, S. Tanaka, D. Wiczer (2015), Multidimensional Skill Mismatch. NBER Working Papers 21376, National Bureau of Economic Research, Inc.10.3386/w21376Search in Google Scholar
Heckman, J.J., J.E. Humphries, N.S. Mader (2011), The GED. Vol. 3 of Handbook of the Economics of Education. Elsevier, Ch. 9, pp. 423–483.10.1016/B978-0-444-53429-3.00009-0Search in Google Scholar
Heckman, J.J., T. Kautz (2012), Hard Evidence on Soft Skills. Labour Economics 19 (4): 451–464.10.1016/j.labeco.2012.05.014Search in Google Scholar
Heckman, J.J., J. Stixrud, S. Urzua (2006), The Effects of Cognitive and Noncognitive Abilities on Labor Market Outcomes and Social Behavior. Journal of Labor Economics 24 (3): 411–482.10.1086/504455Search in Google Scholar
Hsieh, C.-T., P.J. Klenow (2009), Misallocation and Manufacturing TFP in China and India. The Quarterly Journal of Economics 124 (4): 1403–1448.10.1162/qjec.2009.124.4.1403Search in Google Scholar
Idson, T.L. (1989), Establishment Size Differentials in Internal Mobility. The Review of Economics and Statistics 71 (4): 721–724.10.2307/1928120Search in Google Scholar
Jovanovic, B. (1979), Job Matching and the Theory of Turnover. Journal of Political Economy 87 (5): 972–990.10.1086/260808Search in Google Scholar
Kambourov, G., I. Manovskii (2009), Occupational Specificity of Human Capital. International Economic Review 50 (1): 63–115.10.1111/j.1468-2354.2008.00524.xSearch in Google Scholar
Keane, M.P. (2011), Labor Supply and Taxes: A Survey. Journal of Economic Literature 49 (4): 961–1075.10.1257/jel.49.4.961Search in Google Scholar
Lentz, R., D.T. Mortensen (2008), An Empirical Model of Growth Through Product Innovation. Econometrica 76 (6): 1317–1373.Search in Google Scholar
Lindenlaub, I. (2017), Sorting Multidimensional Types: Theory and Application. The Review of Economic Studies 84 (2): 718–789.10.1093/restud/rdw063Search in Google Scholar
Lise, J., F. Postel-Vinay (2015), Multidimensional Skills, Sorting, and Human Capital Accumulation. 2015 Meeting Papers 386, Society for Economic Dynamics.Search in Google Scholar
Manning, A. (2003), Monopsony in Motion: Imperfect Competition in Labor Markets. Princeton: Princeton University Press.Search in Google Scholar
McCall, B.P. (1990) Occupational Matching: A Test of Sorts. Journal of Political Economy 98 (1): 45–69.10.1086/261668Search in Google Scholar
Mincer, J. (1991), Education and Unemployment. NBER Working Papers 3838, National Bureau of Economic Research, Inc.10.3386/w3838Search in Google Scholar
Moscarini, G., K. Thomsson (2007), Occupational and Job Mobility in the US. Scandinavian Journal of Economics 109 (4): 807–836.10.1111/j.1467-9442.2007.00510.xSearch in Google Scholar
Neal, D. (1999), The Complexity of Job Mobility among Young Men. Journal of Labor Economics 17 (2): 237–261.10.1086/209919Search in Google Scholar
Nekarda, C.J. (2008), Weekly Time Series of the U.S. San Diego: University of California. Mimeo.Search in Google Scholar
Oi, W.Y., T.L. Idson (1999), Firm Size and Wages, Ch. 33. pp. 2165–2214. in: O. Ashenfelter, D. Card (Eds.), Handbook of Labor Economics, vol. 3. Elsevier.10.1016/S1573-4463(99)30019-5Search in Google Scholar
Ransom, M.R., R.L. Oaxaca (2010), New Market Power Models and Sex Differences in Pay. Journal of Labor Economics 28 (2): 267–289.10.1086/651245Search in Google Scholar
Restuccia, D., R. Rogerson, 2013. Misallocation and Productivity. Review of Economic Dynamics 16 (1): 1–10.10.1016/j.red.2012.11.003Search in Google Scholar
Ridder, G., G.J. van den Berg (2003), Measuring Labor Market Frictions: A Cross-Country Comparison. Journal of the European Economic Association 1 (1): 224–244.10.1162/154247603322256828Search in Google Scholar
Rogerson, R., R. Shimer, R. Wright (2005), Search-Theoretic Models of the Labor Market: A Survey. Journal of Economic Literature 43 (4): 959–988.10.1257/002205105775362014Search in Google Scholar
Sanders, C., C. Taber (2012), Life-Cycle Wage Growth and Heterogeneous Human Capital. Annual Review of Economics 4 (1): 399–425.10.1146/annurev-economics-080511-111011Search in Google Scholar
Shi, S. (03 2009), Directed Search for Equilibrium Wage-Tenure Contracts. Econometrica 77 (2): 561–584.10.3982/ECTA7870Search in Google Scholar
Song, J., D. Price, F. Guvenen, N. Bloom, T. von Wachter (2019). Firming Up Inequality. The Quarterly Journal of Economics 134(1): 1–50.10.3386/w21199Search in Google Scholar
Stijepic, D. (2016), Small Employers, Large Employers and the Skill Premium. Economics Bulletin 36 (1): 381–387.Search in Google Scholar
Stijepic, D. (2017), Globalization, Worker Mobility and Wage Inequality. Review of International Economics 25 (1): 108–131.10.1111/roie.12258Search in Google Scholar
Stijepic, D. (2018), Workplace Heterogeneity and the Returns to Versatility. Available at: http://dx.doi.org/10.2139/ssrn.2635542.Search in Google Scholar
Stijepic, D. (2019), The impact of the productivity dispersion across employers on the labor’s income share. Economics Bulletin 39 (1): 73–83.Search in Google Scholar
Topel, R. (1991), Specific Capital, Mobility, and Wages: Wages Rise with Job Seniority. Journal of Political Economy 99 (1): 145–176.10.1086/261744Search in Google Scholar
Topel, R.H., M.P. Ward (1992), Job Mobility and the Careers of Young Men. The Quarterly Journal of Economics 107 (2): 439–479.10.2307/2118478Search in Google Scholar
Appendix
A Theory
I rely on the canonical on-the-job search model to motivate the empirical analysis (see e.g. Cahuc and Zylberberg, 2004).
A.1 Assumptions
Let the mass of the set of workers be normalized to unity. Both unemployed and employed workers find jobs according to a Poisson process at rate λ. There is a continuum of jobs in the economy. Furthermore, there exists a ranking of jobs that reflects a person’s preferences over these jobs.[11] Specifically, let p∈[0,1] denote a person’s ranking of a given job. The ranking of jobs may be based on differences in pay between jobs, but may also take into account other job characteristics, e.g. working conditions. I also assume that jobs are sufficiently heterogeneous so that the jobs between which a person is indifferent do not have a non-zero mass.
Job offers are randomly drawn from a sampling distribution F( · ), i.e. F(p) is the share of offers associated with jobs ranked p or lower. The sampling distribution F( · ) reflects the directedness of a person’s search and need not coincide with the actual distribution of jobs. In particular, a person may find it optimal to oversample preferred jobs. For instance, consider the two sampling distributions F( · ) and
A.2 Sorting
The workers’ optimal behavior is as follows. When information about a new job opportunity arises, workers quit their current job and move to the new one provided that the rank of the new job exceeds that of the current one. Without loss of generality, I assume that unemployed workers are at least indifferent between unemployment and the least preferred job in the economy. Therefore, unemployed workers accept all job offers.
Let u denote the steady-state unemployment rate and G(p) the steady-state proportion of employed workers in jobs of rank p or lower. I refer to G( · ) as the workers’ cross-sectional job distribution. Finally, let
[Sorting]. For
Proof 1
In a steady-state equilibrium, the flow of workers into employment, λu, equals the flow into unemployment,
Workers sort into highly ranked jobs by moving from lower ranked to higher ranked jobs. Job-separation shocks prevent workers from staying employed in the highly ranked jobs. For a given sampling distribution, F( · ), it is the ratio of the job-finding rate to the transition rate into unemployment, κ, that reflects how effectively workers sort into highly ranked jobs.
A.3 Worker flows
Workers employed in jobs ranked p quit their current job in the event of a separation shock, δ, or if they find higher ranked jobs,
[Job Mobility]. The unconditional steady-state risk ratio of separating to another job to transitioning into unemployment,
Proof 2
Integrating the conditional separation rate,
where the first equality follows from an application of a change of variables formula, using the steady-state relation
I note that the unconditional steady-state separation rate to another job,
The unconditional steady-state risk ratio of separating to another job to transitioning into unemployment,
Second,
Third,
A.4 Sensitivity analysis
I this section, I relax several assumptions of the canonical on-the-job search model in order to study the robustness of the main theoretical findings.
A.4.1 State-dependent sampling distribution
Let the sampling distribution, F( · ), depend on a person’s employment status. Specifically, the sampling distribution of unemployed workers is denoted by
Conditional on the distributional parameter α,
A.4.2 State-dependent mobility
In the canonical on-the-job search model, the job-finding rate of employed workers,
In a further extension, let the transition rate into unemployment and the job-finding rate be functions of the job rank. Specifically,
In a steady-state equilibrium, the cross-sectional job distribution satisfies the condition
The risk ratio of separating to another employer to transitioning into unemployment,
All in all, the main theoretical results may also hold in an environment with state-dependent mobility. I note that, in the present setup, the sorting of workers into jobs depends on four factors: (i) the workers’ ranking of jobs, p, (ii) the degree of job mobility, i.e. the workers’ ability to reallocate themselves from one job to another, κ, (iv) the mobility differences between jobs, ρ( · ), and (iv) the directedness of job mobility, i.e. the degree to which the mobility is directed towards highly ranked jobs, F( · ).
A.4.3 Convergence to steady state
Let the initial cross-sectional distribution be equal to the sampling distribution, i.e.
where
It immediately follows that the unconditional risk ratio of a job-to-job transition to a transition into unemployment,
B Data
I form sixteen broad industry categories based on the 1990 Census Industry Classification System (codes in parentheses): agriculture, forestry, fisheries (010–032), mining (040–050), construction (060), manufacturing–-nondurable goods (100–222), manufacturing–-durable goods (230–392), transportation (400–432), communications (440–442), utilities and sanitary services (450–472), wholesale trade–-durable goods (500–532), wholesale trade–-nondurable goods (540–571), retail trade (580–691), finance, insurance, real estate (700–712), business and repair services (721–760), personal services (761–791), entertainment and recreation services (800–810), professional and related services (812–893). I exclude public administration (900–932) and active duty military (940–960) from the final sample.
Similarly, I also form broader occupation categories based on the 1990 Census Occupation Classification System (codes in parentheses): executive, administrative and managerial occupations (003–021), managers and administrators, n.e.c. (022), management related occupations (023–037), architects (043), engineers (044–063), mathematical and computer scientists (064–068), natural scientists (069–083), health diagnosing occupations (084–089), health assessment and treating occupations (095–097), therapists (098–106), teachers, postsecondary (113–154), teachers, except postsecondary (155–163), librarians, archivists, curators (164–165), social scientists and urban planners (166–173), social, recreation and religious workers (174–177), lawyers and judges (178–179), writers, artists, entertainers, athletes (183–199), health technologists and technicians (203–208), engineering and related technologists and technicians (213–218), science technicians (223–225), technicians, except health, engineering and science (226–235), supervisors and proprietors, sales occupations (243), sales representatives (253–259), sales workers (263–274), sales counter clerks, cashiers, streets sales workers, news vendors (275–278), sales related occupations (283–290), supervisors, administrative support occupations (303–307), computer equipment operators (308–309), secretaries, stenographers, typists (313–31), information clerks (316–323), records processing occupations, except financial (325–336), financial records processing occupations (337–344), duplication, mail, communication and other office machine operators (345–353), mail and message distributing occupations (354–357), material recording, scheduling and distribution clerks (359–374), adjusters and investigators (375–378), miscellaneous administrative support occupations (379–391), private household occupations (403–408), protective service occupations (413–427), food preparation and service occupations (433–444), health service occupations (445–447), cleaning and building service occupations, except household (448–455), personal service occupations (456–469), farm operators and managers (473–476), farm occupations, except managerial (477–484), related agricultural occupations (485–489), fishers, hunters, trappers, forestry and logging occupations (494–499), supervisors, mechanics, repairers (503), vehicle and mobile equipment mechanics and repairers (505–519), electric and electronic equipment repairers (523–534), miscellaneous mechanics and repairs (535–549), supervisors, construction occupations (553–558), construction trades, except supervisors (563–599), extractive occupations (613–617), supervisors, production occupations (628), precision metal working occupations (634–655), precision woodworking occupations (656–659), precision textile, apparel and furnishing machine workers (666–674), precision workers, assorted materials (675–684), precision food production occupations (686–688), precision inspectors, testers and related workers (689–693), plant and system operators (694–699), metalworking and plastic working machine operators (703–717), metal and plastic processing machine operators (719–725), woodworking machine operators (726–733), printing machine operators (734–737), textile, apparel and furnishings machine operators (738–749), machine operators, assorted materials (753–779), fabricators, assemblers and hand working occupations (783–795), production inspectors, testers, samplers, weighers (796–799), motor vehicle operators (803–815), rail transportation occupations (823–826), water transportation occupations (828–834), material moving equipment operators (843–865), helpers, construction and extractive occupations (866–874), freight, stock and material handlers (875–890). I exclude infrequent occupations that do not allow a meaningful grouping with adjacent occupations. Only 15 observations are affected. Finally, respondents in military occupations (903–905) also do not enter the final sample.
Occupations are possibly miscoded for multiple job holders in the 1996 Panel of the Survey of Income and Program Participation. For further details see the “1996 Panel Waves 1 – 12 Labor Force User Note” from May 12, 2006. All in all, I obtain similar occupational transition rates as in other studies, e.g. Moscarini and Thomsson (2007), with the exception of the first rotation group in the second wave. For this group, I identify occupational changes with the same employer as spurious if either (i) the occupation is imputed in the subsequent interview, (ii) the start date of the job changes, (iii) the industry code changes, (iv) neither the union membership, the union contract coverage, nor the payment modalities (paid by the hour, frequency of payments, e.g. weekly, monthly, etc.) change, or (v) the wage and hours worked change by less than five percent.
© 2020 Oldenbourg Wissenschaftsverlag GmbH, Published by De Gruyter Oldenbourg, Berlin/Boston