CLMay 30, 2018

Anaphora and Coreference Resolution: A Review

arXiv:1805.11824v1195 citations
Originality Synthesis-oriented
AI Analysis

It is a survey paper that synthesizes existing knowledge for researchers in NLP, without introducing new methods or results.

This review clarifies the scope of anaphora and coreference resolution within entity resolution in NLP, analyzing datasets, evaluation metrics, and research methods to provide a clear understanding of the problem and its challenges.

Entity resolution aims at resolving repeated references to an entity in a document and forms a core component of natural language processing (NLP) research. This field possesses immense potential to improve the performance of other NLP fields like machine translation, sentiment analysis, paraphrase detection, summarization, etc. The area of entity resolution in NLP has seen proliferation of research in two separate sub-areas namely: anaphora resolution and coreference resolution. Through this review article, we aim at clarifying the scope of these two tasks in entity resolution. We also carry out a detailed analysis of the datasets, evaluation metrics and research methods that have been adopted to tackle this NLP problem. This survey is motivated with the aim of providing the reader with a clear understanding of what constitutes this NLP problem and the issues that require attention.

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