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Empowering Language Models with Knowledge Graph Reasoning for Question Answering

Authors :
Hu, Ziniu
Xu, Yichong
Yu, Wenhao
Wang, Shuohang
Yang, Ziyi
Zhu, Chenguang
Chang, Kai-Wei
Sun, Yizhou
Publication Year :
2022

Abstract

Answering open-domain questions requires world knowledge about in-context entities. As pre-trained Language Models (LMs) lack the power to store all required knowledge, external knowledge sources, such as knowledge graphs, are often used to augment LMs. In this work, we propose knOwledge REasOning empowered Language Model (OREO-LM), which consists of a novel Knowledge Interaction Layer that can be flexibly plugged into existing Transformer-based LMs to interact with a differentiable Knowledge Graph Reasoning module collaboratively. In this way, LM guides KG to walk towards the desired answer, while the retrieved knowledge improves LM. By adopting OREO-LM to RoBERTa and T5, we show significant performance gain, achieving state-of-art results in the Closed-Book setting. The performance enhancement is mainly from the KG reasoning's capacity to infer missing relational facts. In addition, OREO-LM provides reasoning paths as rationales to interpret the model's decision.<br />Comment: Published on EMNLP 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.08380
Document Type :
Working Paper