Streamlining Conformal Information Retrieval via Score Refinement
Information retrieval (IR) methods, like retrieval augmented generation, are fundamental to modern applications but often lack statistical guarantees. Conformal prediction addresses this by retrieving sets guaranteed to include relevant information, yet existing approaches produce large-sized sets,...
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Zusammenfassung: | Information retrieval (IR) methods, like retrieval augmented generation, are
fundamental to modern applications but often lack statistical guarantees.
Conformal prediction addresses this by retrieving sets guaranteed to include
relevant information, yet existing approaches produce large-sized sets,
incurring high computational costs and slow response times. In this work, we
introduce a score refinement method that applies a simple monotone
transformation to retrieval scores, leading to significantly smaller conformal
sets while maintaining their statistical guarantees. Experiments on various
BEIR benchmarks validate the effectiveness of our approach in producing compact
sets containing relevant information. |
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DOI: | 10.48550/arxiv.2410.02914 |