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    题名: 發展「具語音辨識之合作共筆摘要分析系統」 輔助實體小組討論研究
    Developing a Collaborative Writing Summary Analysis System with Automatic Speech Recognition to facilitate face to face group discussion
    作者: 張閤豈
    Zhang, He-Kai
    贡献者: 陳志銘
    Chen, Chih-Ming
    張閤豈
    Zhang, He-Kai
    关键词: 電腦輔助小組討論
    社會性科學議題
    語音辨識
    語者辨識
    生成式人工智慧
    討論成效
    團體效能
    團體凝聚力
    科技接受度
    Computer-supported group discussion
    Socio-scientific issues
    Speech recognition
    Speaker identification
    Generative artificial intelligence
    Discussion effectiveness
    Collective efficacy
    Group cohesion
    Technology acceptance
    日期: 2023
    上传时间: 2024-02-01 11:39:17 (UTC+8)
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