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Bayesian Prediction-Powered Inference

Authors :
Hofer, R. Alex
Maynez, Joshua
Dhingra, Bhuwan
Fisch, Adam
Globerson, Amir
Cohen, William W.
Publication Year :
2024

Abstract

Prediction-powered inference (PPI) is a method that improves statistical estimates based on limited human-labeled data. Specifically, PPI methods provide tighter confidence intervals by combining small amounts of human-labeled data with larger amounts of data labeled by a reasonably accurate, but potentially biased, automatic system. We propose a framework for PPI based on Bayesian inference that allows researchers to develop new task-appropriate PPI methods easily. Exploiting the ease with which we can design new metrics, we propose improved PPI methods for several importantcases, such as autoraters that give discrete responses (e.g., prompted LLM ``judges'') and autoraters with scores that have a non-linear relationship to human scores.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.06034
Document Type :
Working Paper