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MacNet: Transferring Knowledge from Machine Comprehension to Sequence-to-Sequence Models

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arxiv 1908.01816 v1 pith:QDV5T7GB submitted 2019-07-23 cs.CL cs.LG

MacNet: Transferring Knowledge from Machine Comprehension to Sequence-to-Sequence Models

classification cs.CL cs.LG
keywords machinemodelscomprehensionknowledgesequence-to-sequencetextabstractivelanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Machine Comprehension (MC) is one of the core problems in natural language processing, requiring both understanding of the natural language and knowledge about the world. Rapid progress has been made since the release of several benchmark datasets, and recently the state-of-the-art models even surpass human performance on the well-known SQuAD evaluation. In this paper, we transfer knowledge learned from machine comprehension to the sequence-to-sequence tasks to deepen the understanding of the text. We propose MacNet: a novel encoder-decoder supplementary architecture to the widely used attention-based sequence-to-sequence models. Experiments on neural machine translation (NMT) and abstractive text summarization show that our proposed framework can significantly improve the performance of the baseline models, and our method for the abstractive text summarization achieves the state-of-the-art results on the Gigaword dataset.

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