Estimating Wage Disparities Using Foundation Models
Keyon Vafa, Susan Athey, David M. Blei

TL;DR
This paper develops methods for fine-tuning foundation models to accurately estimate social science parameters, specifically gender wage gaps, by addressing bias and ensuring consistency, and demonstrates improved insights over traditional econometric models.
Contribution
It introduces novel fine-tuning algorithms for foundation models that mitigate bias and achieve root-n consistency in social science estimation problems.
Findings
Foundation models capture richer career history representations.
Career history explains more of the gender wage gap than standard models.
New methods identify important omitted factors in wage gap analysis.
Abstract
The rise of foundation models marks a paradigm shift in machine learning: instead of training specialized models from scratch, foundation models are first trained on massive datasets before being adapted or fine-tuned to make predictions on smaller datasets. Initially developed for text, foundation models have also excelled at making predictions about social science data. However, while many estimation problems in the social sciences use prediction as an intermediate step, they ultimately require different criteria for success. In this paper, we develop methods for fine-tuning foundation models to perform these estimation problems. We first characterize an omitted variable bias that can arise when a foundation model is only fine-tuned to maximize predictive accuracy. We then provide a novel set of conditions for fine-tuning under which estimates derived from a foundation model are…
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Taxonomy
TopicsElectric Power System Optimization · Metallurgy and Material Forming
MethodsSparse Evolutionary Training
