2018
DOI: 10.1145/3186566
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Exploiting User Posts for Web Document Summarization

Abstract: Relevant user posts such as comments or tweets of a Web document provide additional valuable information to enrich the content of this document. When creating user posts, readers tend to borrow salient words or phrases in sentences. This can be considered as word variation. This article proposes a framework that models the word variation aspect to enhance the quality of Web document summarization. Technically, the framework consists of two steps: scoring and selection. In the first step, the social information… Show more

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Cited by 4 publications
(1 citation statement)
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“…Most extractive summarization approaches can be broadly classified into feature-based approaches [15], [16], graph-based approaches [17], [19] and semantic-based approaches [20], [21]. For feature-based methods, Ren et al [16] presented a deep learning method to model relationships among sentences for extractive summarization.…”
Section: A Document Summarizationmentioning
confidence: 99%
“…Most extractive summarization approaches can be broadly classified into feature-based approaches [15], [16], graph-based approaches [17], [19] and semantic-based approaches [20], [21]. For feature-based methods, Ren et al [16] presented a deep learning method to model relationships among sentences for extractive summarization.…”
Section: A Document Summarizationmentioning
confidence: 99%