Gender Bias and Property Taxes
Gordon Burtch, Alejandro Zentner

TL;DR
This study uncovers gender biases in property tax appeal hearings, showing women fare worse, with biases influenced by panel gender and unvoiced perceptions, using large language models to analyze audio data.
Contribution
It introduces a novel application of large language models to analyze unstructured audio data in administrative hearings, revealing gender biases in property tax appeals.
Findings
Female appellants fare worse than males.
Gender of panelists influences outcomes for female appellants.
Behavioral differences depend on appellant and panel gender.
Abstract
Gender bias distorts the economic behavior and outcomes of women and households. We investigate gender biases in property taxes. We analyze records of more than 100,000 property tax appeal hearings and more than 2.7 years of associated audio recordings, considering how panelist and appellant genders associate with hearing outcomes. We first observe that female appellants fare systematically worse than male appellants in their hearings. Second, we show that, whereas male appellants' hearing outcomes do not vary meaningfully with the gender composition of the panel they face, those of female appellants' do, such that female appellants obtain systematically lesser (greater) reductions to their home values when facing female (male) panelists. Employing a multi-modal large language model (M-LLM), we next construct measures of participant behavior and tone from hearing audio recordings. We…
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Taxonomy
TopicsGender, Labor, and Family Dynamics
