Cross-Sentence N-ary Relation Extraction with Graph LSTMs

Author:

Peng Nanyun1,Poon Hoifung2,Quirk Chris2,Toutanova Kristina3,Yih Wen-tau2

Affiliation:

1. Center for Language and Speech Processing, Computer Science Department, Johns Hopkins University, Baltimore, MD, USA,

2. Microsoft Research, Redmond, WA, USA,

3. Google Research, Seattle, WA, USA,

Abstract

Past work in relation extraction has focused on binary relations in single sentences. Recent NLP inroads in high-value domains have sparked interest in the more general setting of extracting n-ary relations that span multiple sentences. In this paper, we explore a general relation extraction framework based on graph long short-term memory networks (graph LSTMs) that can be easily extended to cross-sentence n-ary relation extraction. The graph formulation provides a unified way of exploring different LSTM approaches and incorporating various intra-sentential and inter-sentential dependencies, such as sequential, syntactic, and discourse relations. A robust contextual representation is learned for the entities, which serves as input to the relation classifier. This simplifies handling of relations with arbitrary arity, and enables multi-task learning with related relations. We evaluate this framework in two important precision medicine settings, demonstrating its effectiveness with both conventional supervised learning and distant supervision. Cross-sentence extraction produced larger knowledge bases. and multi-task learning significantly improved extraction accuracy. A thorough analysis of various LSTM approaches yielded useful insight the impact of linguistic analysis on extraction accuracy.

Publisher

MIT Press - Journals

Reference2 articles.

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