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Main Authors: Ma, Kexin, Jin, Ruochun, Wang, Xi, Chen, Huan, Ren, Jing, Tang, Yuhua
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.05524
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author Ma, Kexin
Jin, Ruochun
Wang, Xi
Chen, Huan
Ren, Jing
Tang, Yuhua
author_facet Ma, Kexin
Jin, Ruochun
Wang, Xi
Chen, Huan
Ren, Jing
Tang, Yuhua
contents Retrieval-Augmented Large Language Models (RALMs) have made significant strides in enhancing the accuracy of generated responses.However, existing research often overlooks the data quality issues within retrieval results, often caused by inaccurate existing vector-distance-based retrieval methods.We propose to boost the precision of RALMs' answers from a data quality perspective through the Context-Driven Index Trimming (CDIT) framework, where Context Matching Dependencies (CMDs) are employed as logical data quality rules to capture and regulate the consistency between retrieved contexts.Based on the semantic comprehension capabilities of Large Language Models (LLMs), CDIT can effectively identify and discard retrieval results that are inconsistent with the query context and further modify indexes in the database, thereby improving answer quality.Experiments demonstrate on challenging question-answering tasks.Also, the flexibility of CDIT is verified through its compatibility with various language models and indexing methods, which offers a promising approach to bolster RALMs' data quality and retrieval precision jointly.
format Preprint
id arxiv_https___arxiv_org_abs_2408_05524
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Context-Driven Index Trimming: A Data Quality Perspective to Enhancing Precision of RALMs
Ma, Kexin
Jin, Ruochun
Wang, Xi
Chen, Huan
Ren, Jing
Tang, Yuhua
Computation and Language
Databases
Retrieval-Augmented Large Language Models (RALMs) have made significant strides in enhancing the accuracy of generated responses.However, existing research often overlooks the data quality issues within retrieval results, often caused by inaccurate existing vector-distance-based retrieval methods.We propose to boost the precision of RALMs' answers from a data quality perspective through the Context-Driven Index Trimming (CDIT) framework, where Context Matching Dependencies (CMDs) are employed as logical data quality rules to capture and regulate the consistency between retrieved contexts.Based on the semantic comprehension capabilities of Large Language Models (LLMs), CDIT can effectively identify and discard retrieval results that are inconsistent with the query context and further modify indexes in the database, thereby improving answer quality.Experiments demonstrate on challenging question-answering tasks.Also, the flexibility of CDIT is verified through its compatibility with various language models and indexing methods, which offers a promising approach to bolster RALMs' data quality and retrieval precision jointly.
title Context-Driven Index Trimming: A Data Quality Perspective to Enhancing Precision of RALMs
topic Computation and Language
Databases
url https://arxiv.org/abs/2408.05524