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Autori principali: Guerdan, Luke, Whitehouse, Justin, Truong, Kimberly, Holstein, Kenneth, Wu, Zhiwei Steven
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.22957
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author Guerdan, Luke
Whitehouse, Justin
Truong, Kimberly
Holstein, Kenneth
Wu, Zhiwei Steven
author_facet Guerdan, Luke
Whitehouse, Justin
Truong, Kimberly
Holstein, Kenneth
Wu, Zhiwei Steven
contents As Generative AI (GenAI) systems see growing adoption, a key concern involves the external validity of evaluations, or the extent to which they generalize from lab-based to real-world deployment conditions. Threats to the external validity of GenAI evaluations arise when the source sample of human raters and system outputs used to obtain a system quality estimate differs from the target distribution at deployment time. In this work, we propose a doubly-robust estimation framework designed to address this evaluation sampling bias. Key to our approach is the use of "persona" ratings produced by prompting an LLM evaluator (i.e., an LLM-as-a-judge) to behave as a human rater with specific sociodemographic characteristics. Our doubly-robust framework combines these informative yet imperfect persona ratings with human ratings obtained under evaluation sampling bias to produce statistically valid system quality estimates. In particular, we show that our approach yields valid system quality estimates when either (i) a model trained to predict human ratings using persona ratings and source data observed under sampling bias, or (ii) a reweighting model that corrects for sampling bias is of sufficient quality. We validate our framework theoretically and via a novel Persona Simulation Framework (PSF) designed to systematically manipulate persona quality and the degree of evaluation sampling bias present in source data. Our work provides a principled foundation for combining imperfect persona ratings with human ratings observed under sampling bias to obtain valid system quality estimates.
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record_format arxiv
spellingShingle Doubly-Robust LLM-as-a-Judge: Externally Valid Estimation with Imperfect Personas
Guerdan, Luke
Whitehouse, Justin
Truong, Kimberly
Holstein, Kenneth
Wu, Zhiwei Steven
Machine Learning
As Generative AI (GenAI) systems see growing adoption, a key concern involves the external validity of evaluations, or the extent to which they generalize from lab-based to real-world deployment conditions. Threats to the external validity of GenAI evaluations arise when the source sample of human raters and system outputs used to obtain a system quality estimate differs from the target distribution at deployment time. In this work, we propose a doubly-robust estimation framework designed to address this evaluation sampling bias. Key to our approach is the use of "persona" ratings produced by prompting an LLM evaluator (i.e., an LLM-as-a-judge) to behave as a human rater with specific sociodemographic characteristics. Our doubly-robust framework combines these informative yet imperfect persona ratings with human ratings obtained under evaluation sampling bias to produce statistically valid system quality estimates. In particular, we show that our approach yields valid system quality estimates when either (i) a model trained to predict human ratings using persona ratings and source data observed under sampling bias, or (ii) a reweighting model that corrects for sampling bias is of sufficient quality. We validate our framework theoretically and via a novel Persona Simulation Framework (PSF) designed to systematically manipulate persona quality and the degree of evaluation sampling bias present in source data. Our work provides a principled foundation for combining imperfect persona ratings with human ratings observed under sampling bias to obtain valid system quality estimates.
title Doubly-Robust LLM-as-a-Judge: Externally Valid Estimation with Imperfect Personas
topic Machine Learning
url https://arxiv.org/abs/2509.22957