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Paper page - SUGAR: Leveraging Contextual Confidence for Smarter Retrieval
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arxiv:2501.04899

SUGAR: Leveraging Contextual Confidence for Smarter Retrieval

Published on Jan 9, 2025
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Abstract

Semantic Uncertainty Guided Adaptive Retrieval (SUGAR) improves question answering performance and efficiency by selectively making retrieval decisions based on context-based entropy.

AI-generated summary

Bearing in mind the limited parametric knowledge of Large Language Models (LLMs), retrieval-augmented generation (RAG) which supplies them with the relevant external knowledge has served as an approach to mitigate the issue of hallucinations to a certain extent. However, uniformly retrieving supporting context makes response generation source-inefficient, as triggering the retriever is not always necessary, or even inaccurate, when a model gets distracted by noisy retrieved content and produces an unhelpful answer. Motivated by these issues, we introduce Semantic Uncertainty Guided Adaptive Retrieval (SUGAR), where we leverage context-based entropy to actively decide whether to retrieve and to further determine between single-step and multi-step retrieval. Our empirical results show that selective retrieval guided by semantic uncertainty estimation improves the performance across diverse question answering tasks, as well as achieves a more efficient inference.

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