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FC-KBQA: A Fine-to-Coarse Composition Framework for Knowledge Base Question Answering

Authors :
Zhang, Lingxi
Zhang, Jing
Wang, Yanling
Cao, Shulin
Huang, Xinmei
Li, Cuiping
Chen, Hong
Li, Juanzi
Publication Year :
2023

Abstract

The generalization problem on KBQA has drawn considerable attention. Existing research suffers from the generalization issue brought by the entanglement in the coarse-grained modeling of the logical expression, or inexecutability issues due to the fine-grained modeling of disconnected classes and relations in real KBs. We propose a Fine-to-Coarse Composition framework for KBQA (FC-KBQA) to both ensure the generalization ability and executability of the logical expression. The main idea of FC-KBQA is to extract relevant fine-grained knowledge components from KB and reformulate them into middle-grained knowledge pairs for generating the final logical expressions. FC-KBQA derives new state-of-the-art performance on GrailQA and WebQSP, and runs 4 times faster than the baseline.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.14722
Document Type :
Working Paper