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arxiv: 1808.07187 · v2 · pith:Z7DC26YBnew · submitted 2018-08-22 · 💻 cs.CL · cs.AI· cs.LG

Neural Latent Extractive Document Summarization

classification 💻 cs.CL cs.AIcs.LG
keywords extractivelabelslatentsummarizationgoldheuristicallymodelmodels
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Extractive summarization models require sentence-level labels, which are usually created heuristically (e.g., with rule-based methods) given that most summarization datasets only have document-summary pairs. Since these labels might be suboptimal, we propose a latent variable extractive model where sentences are viewed as latent variables and sentences with activated variables are used to infer gold summaries. During training the loss comes \emph{directly} from gold summaries. Experiments on the CNN/Dailymail dataset show that our model improves over a strong extractive baseline trained on heuristically approximated labels and also performs competitively to several recent models.

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