Predicting re-employment: Machine learning versus assessments by unemployed workers and by their caseworkers
We analyze unique data on three sources of information on the probability of re-employment within 6 months (RE6), for the same individuals sampled from the inflow into unemployment. First, they were asked for their perceived probability of RE6. Second, their caseworkers revealed whether they expected RE6. Third, random-forest machine learning methods are trained on administrative data on the full inflow, to predict individual RE6. We compare the predictive performance of these measures and consider how combinations improve this performance. We show that self-reported (and to a lesser extent caseworker) assessments sometimes contain information not captured by the machine learning algorithm.
Year of publication: |
2023
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Authors: | van den Berg, Gerard J. ; Kunaschk, Max ; Lang, Julia ; Stephan, Gesine ; Uhlendorff, Arne |
Publisher: |
Uppsala : Institute for Evaluation of Labour Market and Education Policy (IFAU) |
Subject: | unemployment | expectations | prediction | random forest | unemployment insurance | information |
Saved in:
freely available
Series: | Working Paper ; 2023:22 |
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Type of publication: | Book / Working Paper |
Type of publication (narrower categories): | Working Paper |
Language: | English |
Other identifiers: | 1873408056 [GVK] |
Classification: | J64 - Unemployment: Models, Duration, Incidence, and Job Search ; J65 - Unemployment Insurance; Severance Pay; Plant Closings ; c55 ; C53 - Forecasting and Other Model Applications ; C41 - Duration Analysis ; C21 - Cross-Sectional Models; Spatial Models |
Source: |
Persistent link: https://www.econbiz.de/10014540915