AI RESEARCH
Context Attribution with Multi-Armed Bandit Optimization
arXiv CS.AI
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ArXi:2506.19977v2 Announce Type: replace Understanding which parts of the retrieved context contribute to a large language model's generated answer is essential for building interpretable and trustworthy retrieval-augmented generation. We propose a novel framework that formulates context attribution as a combinatorial multi-armed bandit problem. We utilize Linear Thompson Sampling to efficiently identify the most influential context segments while minimizing the number of model queries.