A topic-based sentence representation for extractive text summarization
2019-09-01RANLP 2019Unverified0· sign in to hype
Nikolaos Gialitsis, Nikiforos Pittaras, Panagiotis Stamatopoulos
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In this study, we examine the effect of probabilistic topic model-based word representations, on sentence-based extractive summarization. We formulate the task of summary extraction as a binary classification problem, and we test a variety of machine learning algorithms, exploring a range of different settings. An wide experimental evaluation on the MultiLing 2015 MSS dataset illustrates that topic-based representations can prove beneficial to the extractive summarization process in terms of F1, ROUGE-L and ROUGE-W scores, compared to a TF-IDF baseline, with QDA-based analysis providing the best results.