Dissecting Idiosyncratic Earnings Risk

Author:

Halvorsen Elin1,Holter Hans A2,Ozkan Serdar3,Storesletten Kjetil4

Affiliation:

1. Statistics Norway , Norway

2. University of Delaware, USA, University of Oslo , Norway and Nova SBE, Portugal

3. FRB of St. Louis, USA and University of Toronto , Canada

4. University of Minnesota , USA

Abstract

Abstract This paper examines whether nonlinear and non-Gaussian features of earnings dynamics are caused by hours or hourly wages. Our findings from the Norwegian administrative and survey data are as follows: (i) Nonlinear mean reversion in earnings is driven by the dynamics of hours worked rather than wages since wage dynamics are close to linear, while hours dynamics are nonlinear—negative changes to hours are transitory, while positive changes are persistent. (ii) Large earnings changes are driven equally by hours and wages, whereas small changes are associated mainly with wage shocks. (iii) Both wages and hours contribute to negative skewness and high kurtosis for earnings changes, although hour-wage interactions are quantitatively more important. (iv) When considering household earnings and disposable household income, the deviations from normality are mitigated relative to individual labor earnings: changes in disposable household income are approximately symmetric and less leptokurtic.

Funder

University of Edinburgh

University of Minnesota

Rheinische Friedrich-Wilhelms-Universität Bonn

Universität zu Köln

University of Essex

University of Florida

University of Manchester

University of Southampton

Universitetet i Oslo

University of Toronto

York University

Research Council of Norway

Publisher

Oxford University Press (OUP)

Subject

General Economics, Econometrics and Finance

Reference40 articles.

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