Abstractive Summarization for Amazon Reviews

نویسنده

  • Lu Yang
چکیده

This paper focuses on feed-forward neural network with attention-based encoder to solve the challenge of abstractive summarization. We also briefly explored the potential of attentive recurrent neural network and recurrent neural network encoder-decoder. Those models were originally proposed to solve similar tasks, such as news articles summarization and machine translation; we modify and extend them to the problem of product review summarization and evaluate their effectiveness using ROUGE and visual inspection of results. In the end, we find the results to be promising.

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تاریخ انتشار 2016