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Training Contracts, Worker Overconfidence, and the Provision of Firm-Sponsored General Training

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  • Mitchell Hoffman

    (University of Toronto)

Abstract

Training by firms is a central means by which workers accumulate human capital, yet firms may be reluctant to provide general training if workers can quit and use their gained skills elsewhere. ``Training contracts" that impose a penalty for premature quitting can help alleviate this inefficiency. Using two exogenously staggered contract changes at a leading trucking firm, we show that training contracts significantly reduce post-training quitting and increase the profitability of training. We demonstrate further that training contracts have especially large effects on training profits in our setting because of their interaction with worker overconfidence. If workers are overconfident about their own productivity at the current firm relative to their outside option, they will be more likely to sign training contracts and less likely to quit after training. Combining weekly productivity data with weekly productivity beliefs, we show that workers systematically overpredict their productivity, both with and without randomized financial incentives for accurate prediction. To quantify the impact of overconfidence for optimal contracts and welfare, we develop and estimate a structural learning model with biased beliefs that accounts for many key features of the data. Eliminating worker overconfidence would moderately increase worker welfare by 1.7%, but would decrease training profits by over $8,000 per truck and substantially alter the optimal training contract. We confirm the feasibility of reducing overconfidence using an information experiment at a second large trucking firm. Despite the positive effect of training contracts on profits, training may not be profitable unless workers are overconfident.

Suggested Citation

  • Mitchell Hoffman, 2014. "Training Contracts, Worker Overconfidence, and the Provision of Firm-Sponsored General Training," 2014 Meeting Papers 203, Society for Economic Dynamics.
  • Handle: RePEc:red:sed014:203
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    References listed on IDEAS

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    Cited by:

    1. Lazear, Edward P., 2016. "Overconfidence and Occupational Choice," Research Papers 3419, Stanford University, Graduate School of Business.
    2. Paul Heidhues & Botond Kőszegi, 2015. "On the Welfare Costs of Naiveté in the US Credit-Card Market," Review of Industrial Organization, Springer;The Industrial Organization Society, vol. 47(3), pages 341-354, November.
    3. Michael Grubb, 2015. "Behavioral Consumers in Industrial Organization: An Overview," Review of Industrial Organization, Springer;The Industrial Organization Society, vol. 47(3), pages 247-258, November.
    4. Michael D. Grubb, 2015. "Behavioral Consumers in Industrial Organization," Boston College Working Papers in Economics 879, Boston College Department of Economics.
    5. Florian Englmaier & Matthias Fahn & Marco A. Schwarz, 2016. "Long-Term Employment Relations when Agents are Present Biased," CESifo Working Paper Series 6159, CESifo.
    6. Wiljan van den Berge & Egbert Jongen & Karen van der Wiel, 2017. "Using Tax Deductions to Promote Lifelong Learning: Real and Shifting Responses," CPB Discussion Paper 353, CPB Netherlands Bureau for Economic Policy Analysis.
    7. Andrew T. Ching & Tülin Erdem & Michael P. Keane, 2013. "Learning Models: An Assessment of Progress, Challenges and New Developments," Economics Papers 2013-W07, Economics Group, Nuffield College, University of Oxford.
    8. Bo Cowgill & Eric Zitzewitz, 2015. "Corporate Prediction Markets: Evidence from Google, Ford, and Firm X," The Review of Economic Studies, Review of Economic Studies Ltd, vol. 82(4), pages 1309-1341.
    9. Burks, Stephen V. & Cowgill, Bo & Hoffman, Mitchell & Housman, Michael, 2013. "The Value of Hiring through Referrals," IZA Discussion Papers 7382, Institute of Labor Economics (IZA).

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