Benchmarking Debiasing Methods for LLM-based Parameter Estimates
Paper i proceeding, 2025

Large language models (LLMs) offer an inexpensive yet powerful way to annotate text, but are often inconsistent when compared with experts. These errors can bias downstream estimates of population parameters such as regression coefficients and causal effects. To mitigate this bias, researchers have developed debiasing methods such as Design-based Supervised Learning (DSL) and Prediction-Powered Inference (PPI), which promise valid estimation by combining LLM annotations with a limited number of expensive expert annotations.Although these methods produce consistent estimates under theoretical assumptions, it is unknown how they compare in finite samples of sizes encountered in applied research. We make two contributions: First, we study how each method’s performance scales with the number of expert annotations, highlighting regimes where LLM bias or limited expert labels significantly affect results. Second, we compare DSL and PPI across a range of tasks, finding that although both achieve low bias with large datasets, DSL often outperforms PPI on bias reduction and empirical efficiency, but its performance is less consistent across datasets. Our findings indicate that there is a bias-variance tradeoff at the level of debiasing methods, calling for more research on developing metrics for quantifying their efficiency in finite samples.

natural language processing

computational social science

large language models

parameter estimates

Författare

Nicolas Pietro Marie Audinet De Pieuchon

Göteborgs universitet

Data Science och AI 2

Adel Daoud

Göteborgs universitet

Linköpings universitet

Chalmers, Data- och informationsteknik

Connor T. Jerzak

University of Texas

Moa Johansson

Göteborgs universitet

Data Science och AI 2

Richard Johansson

Chalmers, Data- och informationsteknik, Data Science

Göteborgs universitet

Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

19768-19783
979-8-89176-332-6 (ISBN)

2025 Conference on Empirical Methods in Natural Language Processing
Suzhou, China,

Ämneskategorier (SSIF 2025)

Språkbehandling och datorlingvistik

Artificiell intelligens

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Senast uppdaterat

2026-01-07