Entity Commonsense Representation for Neural Abstractive Summarization
June 14, 2018 ยท Declared Dead ยท ๐ North American Chapter of the Association for Computational Linguistics
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Authors
Reinald Kim Amplayo, Seonjae Lim, Seung-won Hwang
arXiv ID
1806.05504
Category
cs.CL: Computation & Language
Citations
36
Venue
North American Chapter of the Association for Computational Linguistics
Last Checked
4 months ago
Abstract
A major proportion of a text summary includes important entities found in the original text. These entities build up the topic of the summary. Moreover, they hold commonsense information once they are linked to a knowledge base. Based on these observations, this paper investigates the usage of linked entities to guide the decoder of a neural text summarizer to generate concise and better summaries. To this end, we leverage on an off-the-shelf entity linking system (ELS) to extract linked entities and propose Entity2Topic (E2T), a module easily attachable to a sequence-to-sequence model that transforms a list of entities into a vector representation of the topic of the summary. Current available ELS's are still not sufficiently effective, possibly introducing unresolved ambiguities and irrelevant entities. We resolve the imperfections of the ELS by (a) encoding entities with selective disambiguation, and (b) pooling entity vectors using firm attention. By applying E2T to a simple sequence-to-sequence model with attention mechanism as base model, we see significant improvements of the performance in the Gigaword (sentence to title) and CNN (long document to multi-sentence highlights) summarization datasets by at least 2 ROUGE points.
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