JSAI2020

Presentation information

General Session

General Session » J-9 Natural language processing, information retrieval

[2H6-GS-9] Natural language processing, information retrieval: Document generation

Wed. Jun 10, 2020 5:50 PM - 7:30 PM Room H (jsai2020online-8)

座長:高瀬翔(東工大)

6:30 PM - 6:50 PM

[2H6-GS-9-03] Response Document Generation for Accommodation Reviews Using Hierarchical Encoder-Decoder Models

〇Yuriko Hashizume1, Mikio Yamamoto1 (1. Graduate school of System and Information Engineering, University of Tsukuba)

Keywords:Deep Learning, language generation, sequence-to-sequence, attention

We examine a system for presenting the draft text to writers of response documents. Since a document is a set of sentences, it is necessary to handle a symbol sequence longer than a sentence conversion such as a conventional machine translation. We propose a method using pre-trained sentence embedding as input of hierarchical RNN encoder-decoder model. It can generate a more detailed response document than the simple non-hierarchical RNN encoder-decoder model.

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