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Deep Communicating Agents for Abstractive Summarization

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arxiv 1803.10357 v3 pith:MHHBUCOP submitted 2018-03-27 cs.CL

Deep Communicating Agents for Abstractive Summarization

classification cs.CL
keywords agentscommunicatingdeepencodersmultipleabstractivelongsingle
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present deep communicating agents in an encoder-decoder architecture to address the challenges of representing a long document for abstractive summarization. With deep communicating agents, the task of encoding a long text is divided across multiple collaborating agents, each in charge of a subsection of the input text. These encoders are connected to a single decoder, trained end-to-end using reinforcement learning to generate a focused and coherent summary. Empirical results demonstrate that multiple communicating encoders lead to a higher quality summary compared to several strong baselines, including those based on a single encoder or multiple non-communicating encoders.

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Cited by 2 Pith papers

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