人工知能学会全国大会論文集
Online ISSN : 2758-7347
33rd (2019)
セッションID: 2F1-E-3-02
会議情報

Extraction of Online Discussion Structures for Automated Facilitation Agent
*Shota SUZUKINaoko YAMAGUCHITomohiro NISHIDAAhmed MOUSTAFADaichi SHIBATAKai YOSHINOKentaro HIRAISHITakayuki ITO
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会議録・要旨集 フリー

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抄録

This paper proposes an approach that aims to extract the discussion structure from large-scale text-based online discussions. The ultimate goal is to develop an automated facilitation agent that is able to extract discussion structures from large-scale online discussions. To support this facilitation agent, an extraction approach is needed. Towards this end, we adopt the issue-based information system (IBIS), as a suitable format for structuring online discussions. In this context, we model the task of extracting an IBIS structure as it consists of node extraction and link extraction. Towards this end, a deep neural network based approach is employed in order to perform these two extraction subtasks. In order to evaluate the proposed approach, a set of experiments has been conducted on the data collected from the discussions in the online discussion support system called D-Agree. The experimental results show that the proposed approach is efficient for extracting online discussion structures.

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© 2019 The Japanese Society for Artificial Intelligence
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