Presentation 2022-11-05
Estimation and Visualization of Learning Types for Class Dialogues Using Neural Network Model
Sakuei Onishi, Hiromitsu Shiina, Tomohiko Yasumori,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) In elementary school classes, lesson inspection activities have been conducted to improve classes, and feedback is important. In particular, there are many utterances such as teacher's explanation and promotion, questions, and children's answers, and there is a kind of dialogue. By analyzing this dialogue, it is possible to analyze the type of utterance of teachers and the state of learning of children, and to feedback the classification of learning to teachers. In addition to BERT and Transformer's methods, which enable us to grasp context, there is a GVT model that is used in dialogue response generation as a suitable model for conversation. In this study, in addition to the analysis by Bert, we propose a model that extends the GVT (Global Variational Transformer) model to consider the context for each teacher - child interlocutor, and analyze the type of learning from the dialogue. In addition, we are developing a system for visualizing the time series distribution of learning types in classes.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) Reflection Activity / Speech Classfication Dialogue Analysis / BERT / Transormer / GVT / Visualization
Paper # ET2022-38
Date of Issue 2022-10-29 (ET)

Conference Information
Committee ET
Conference Date 2022/11/5(1days)
Place (in Japanese) (See Japanese page)
Place (in English) Online
Topics (in Japanese) (See Japanese page)
Topics (in English) Sessions for Young Researchers (Young Researcher Awards Selection), etc.
Chair Kenji Watanabe(Hiroshimai Univ.)
Vice Chair Hisayoshi Kunimune(Chiba Inst. of Tech.)
Secretary Hisayoshi Kunimune(Mejiro Univ.)
Assistant Kazuaki Yoshihara(Kinki Univ.) / Toru Kano(Tokyo University of Science)

Paper Information
Registration To Technical Committee on Educational Technology
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Estimation and Visualization of Learning Types for Class Dialogues Using Neural Network Model
Sub Title (in English)
Keyword(1) Reflection Activity
Keyword(2) Speech Classfication Dialogue Analysis
Keyword(3) BERT
Keyword(4) Transormer
Keyword(5) GVT
Keyword(6) Visualization
1st Author's Name Sakuei Onishi
1st Author's Affiliation Graduate School of Informatics(Okayama Unisersity of Science)
2nd Author's Name Hiromitsu Shiina
2nd Author's Affiliation Okayama Unisersity of Science(Okayama Unisersity of Science)
3rd Author's Name Tomohiko Yasumori
3rd Author's Affiliation Okayama Unisersity of Science(Okayama Univ. of Science)
Date 2022-11-05
Paper # ET2022-38
Volume (vol) vol.122
Number (no) ET-241
Page pp.pp.47-54(ET),
#Pages 8
Date of Issue 2022-10-29 (ET)