Prune 'n Predict: Optimizing LLM Decision-making with Conformal Prediction
December 31, 2024 ยท Declared Dead ยท ๐ International Conference on Machine Learning
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Authors
Harit Vishwakarma, Alan Mishler, Thomas Cook, Niccolรฒ Dalmasso, Natraj Raman, Sumitra Ganesh
arXiv ID
2501.00555
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
stat.AP,
stat.ML
Citations
4
Venue
International Conference on Machine Learning
Last Checked
4 months ago
Abstract
Large language models (LLMs) are empowering decision-making in several applications, including tool or API usage and answering multiple-choice questions (MCQs). However, incorrect outputs pose significant risks in high-stakes domains like healthcare and finance. To quantify LLM uncertainty and thereby mitigate these risks, recent works employ conformal prediction (CP), a model- and distribution-agnostic framework that uses LLM outputs to generate a \emph{prediction set} containing the true answer with high probability. Leveraging CP, we propose \emph{conformal revision of questions} (CROQ), which revises the question by narrowing down the available choices to those in the prediction set and asking the LLM the revised question. We expect LLMs to be more accurate on revised questions with fewer choices. Furthermore, we expect CROQ to be effective when the prediction sets from CP are small. Commonly used logit scores often lead to large sets, diminishing CROQ's effectiveness. To overcome this, we propose CP-OPT, an optimization framework to learn scores that minimize set sizes while maintaining coverage. Our extensive experiments on MMLU, ToolAlpaca, and TruthfulQA datasets with multiple LLMs show that CROQ improves accuracy over the standard inference, with more pronounced gains when paired with CP-OPT.
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