Abstract

Cross-document co-reference resolution (CDCR) is the task of identifying and linking mentions to entities and concepts across many text documents. Current state-of-the-art models for this task assume that all documents are of the same type (e.g. news articles) or fall under the same theme. However, it is also desirable to perform CDCR across different domains (type or theme). A particular use case we focus on in this paper is the resolution of entities mentioned across scientific work and newspaper articles that discuss them. Identifying the same entities and corresponding concepts in both scientific articles and news can help scientists understand how their work is represented in mainstream media. We propose a new task and English language dataset for cross-document cross-domain co-reference resolution (CDˆ2CR). The task aims to identify links between entities across heterogeneous document types. We show that in this cross-domain, cross-document setting, existing CDCR models do not perform well and we provide a baseline model that outperforms current state-of-the-art CDCR models on CDˆ2CR. Our data set, annotation tool and guidelines as well as our model for cross-document cross-domain co-reference are all supplied as open access open source resources.

Highlights

  • Cross-document co-reference resolution (CDCR) is the task of recognising when multiple documents mention and refer to the same real-world entity or concept

  • The work we present here focuses on the first crossdocument, cross-domain co-reference-resolution (CD2CR) use case, namely co-reference resolution between news articles and scientific papers

  • We evaluate our best performing CD2CR baseline model (CA-V) at the entity resolution CDCR task using the ECB+ test corpus, to see how well it generalises to the original CDCR task

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Summary

Introduction

Cross-document co-reference resolution (CDCR) is the task of recognising when multiple documents mention and refer to the same real-world entity or concept. CDCR carried out on separate news articles that refer to the same politician can facilitate inter-document sentence alignment required for stance detection and natural language inference models. CDCR can improve information retrieval and multi-document summarisation by grouping documents based on the entities that are mentioned within them. Recent CDCR work (Dutta and Weikum, 2015; Barhom et al, 2019; Cattan et al, 2020) has primarily focused on resolution of entity mentions across news articles. Work based on modern transformer networks such as BERT (Devlin et al, 2019) and ElMo (Peters et al, 2018) have been pre-trained on large news corpora and are well suited to news-based CDCR (Barhom et al, 2019)

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