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Mental Health and Employment: A Bounding Approach Using Panel Data*

Mark L. Bryan, Nigel Rice, Jennifer Roberts, Cristina Sechel

2022Oxford Bulletin of Economics and Statistics41 citationsDOIOpen Access PDF

Abstract

Abstract The effect of mental health on employment is a key policy question, but reliable causal estimates are elusive. Exploiting panel data and extending recent techniques using selection on observables to provide information on selection along unobservables, we estimate that transitioning into poor mental health leads to a 1.6% point reduction in the probability of employment; approximately 10% of the raw employment gap. Selection into mental health is almost entirely based on time‐invariant characteristics, rendering fixed effects estimates unbiased in this context, meaning researchers no longer have to rely on the narrow local average treatment effects of most health/work IV studies.

Topics & Concepts

Mental healthBounding overwatchRendering (computer graphics)Raw dataPanel dataEconometricsInstrumental variableContext (archaeology)Selection (genetic algorithm)PsychologyEconomicsDemographic economicsComputer scienceStatisticsMathematicsPsychiatryGeographyArtificial intelligenceArchaeologyEmployment and Welfare StudiesHealth disparities and outcomesRetirement, Disability, and Employment
Mental Health and Employment: A Bounding Approach Using Panel Data* | Litcius