Journal of Data Science logo


Login Register

  1. Home
  2. Issues
  3. Volume 7, Issue 1 (2009)
  4. A Locally Stationary Markov Chain Model ...

Journal of Data Science

Submit your article Information
  • Article info
  • More
    Article info

A Locally Stationary Markov Chain Model for Labor Dynamics
Volume 7, Issue 1 (2009), pp. 27–42
Enrique E. Alvarez   Francisco J. Ciocchini   Kishori Konwar  

Authors

 
Placeholder
https://doi.org/10.6339/JDS.2009.07(1).417
Pub. online: 4 August 2022      Type: Research Article      Open accessOpen Access

Published
4 August 2022

Abstract

Abstract: Labor market surveys usually partition individuals into three states: employed, unemployed, and out of the labor force. In particular, the Argentine “ Encuesta Permanente de Hogares (EPH)” follows a rotating scheme so that each selected household is interviewed four times within two years. Each time, the current labor state of individuals is recorded, together with extensive demographic information. We model those labor paths as consecutive observations from independent Markov chains, were transition matrixes are related to covariates through a multivariate logistic link. Because the EPH is severely affected by attrition, a significant fraction of the surveyed paths contain just one single point. Instead of discarding those observations, we opt to base estimation on the full data by (i) assuming the Markov chains are stationary and (ii) incorporating the chronological time of the first interview as an additional covariate for each individual. This novel treatment represents a convenient approximation, which we illustrate with data from Argentina in the period 1995-2002 via maximum likelihood estimation. Several interesting labor market indexes, which are functionally related to the transition matrixes, are also presented in the last portion of the paper and illustrated with real data.

PDF XML
PDF XML

Copyright
No copyright data available.

Keywords
Markov Ccain unemployment

Metrics
since February 2021
555

Article info
views

589

PDF
downloads

Export citation

Copy and paste formatted citation
Placeholder

Download citation in file


Share


RSS

Journal of data science

  • Online ISSN: 1683-8602
  • Print ISSN: 1680-743X

About

  • About journal

For contributors

  • Submit
  • OA Policy
  • Become a Peer-reviewer

Contact us

  • JDS@ruc.edu.cn
  • No. 59 Zhongguancun Street, Haidian District Beijing, 100872, P.R. China
Powered by PubliMill  •  Privacy policy