Emotion generation method in online physical education teaching based on data mining of teacher-student interactions

Different from conventional educational paradigms, online education lacks the direct interplay between instructors and learners, particularly in the sphere of virtual physical education. Regrettably, extant research seldom directs its focus toward the intricacies of emotional arousal within the teac...

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Main Authors: Yanwei Zhao, Xiangyun Kong, Wei Zheng, Shahbaz Ahmad
Format: Article
Language:English
Published: PeerJ Inc. 2024-01-01
Series:PeerJ Computer Science
Subjects:
Online Access:https://peerj.com/articles/cs-1814.pdf
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author Yanwei Zhao
Xiangyun Kong
Wei Zheng
Shahbaz Ahmad
author_facet Yanwei Zhao
Xiangyun Kong
Wei Zheng
Shahbaz Ahmad
author_sort Yanwei Zhao
collection DOAJ
description Different from conventional educational paradigms, online education lacks the direct interplay between instructors and learners, particularly in the sphere of virtual physical education. Regrettably, extant research seldom directs its focus toward the intricacies of emotional arousal within the teacher-student course dynamic. The formulation of an emotion generation model exhibits constraints necessitating refinement tailored to distinct educational cohorts, disciplines, and instructional contexts. This study proffers an emotion generation model rooted in data mining of teacher-student course interactions to refine emotional discourse and enhance learning outcomes in the realm of online physical education. This model includes techniques for data preprocessing and augmentation, a multimodal dialogue text emotion recognition model, and a topic-expanding emotional dialogue generation model based on joint decoding. The encoder assimilates the input sentence into a fixed-length vector, culminating in the final state, wherein the vector produced by the context recurrent neural network is conjoined with the preceding word’s vector and employed as the decoder’s input. Leveraging the long-short-term memory neural network facilitates the modeling of emotional fluctuations across multiple rounds of dialogue, thus fulfilling the mandate of emotion prediction. The evaluation of the model against the DailyDialog dataset demonstrates its superiority over the conventional end-to-end model in terms of loss and confusion values. Achieving an accuracy rate of 84.4%, the model substantiates that embedding emotional cues within dialogues augments response generation. The proposed emotion generation model augments emotional discourse and learning efficacy within online physical education, offering fresh avenues for refining and advancing emotion generation models.
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spelling doaj.art-08e8331b0eaf4ccfb8af6b3bc21378a12024-01-21T15:05:17ZengPeerJ Inc.PeerJ Computer Science2376-59922024-01-0110e181410.7717/peerj-cs.1814Emotion generation method in online physical education teaching based on data mining of teacher-student interactionsYanwei Zhao0Xiangyun Kong1Wei Zheng2Shahbaz Ahmad3Langfang Normal University, LangFang, ChinaHebei Oriental University, LangFang, ChinaLangfang 16th Middle School, LangFang, ChinaNational Textile University, Faisalabad, PakistanDifferent from conventional educational paradigms, online education lacks the direct interplay between instructors and learners, particularly in the sphere of virtual physical education. Regrettably, extant research seldom directs its focus toward the intricacies of emotional arousal within the teacher-student course dynamic. The formulation of an emotion generation model exhibits constraints necessitating refinement tailored to distinct educational cohorts, disciplines, and instructional contexts. This study proffers an emotion generation model rooted in data mining of teacher-student course interactions to refine emotional discourse and enhance learning outcomes in the realm of online physical education. This model includes techniques for data preprocessing and augmentation, a multimodal dialogue text emotion recognition model, and a topic-expanding emotional dialogue generation model based on joint decoding. The encoder assimilates the input sentence into a fixed-length vector, culminating in the final state, wherein the vector produced by the context recurrent neural network is conjoined with the preceding word’s vector and employed as the decoder’s input. Leveraging the long-short-term memory neural network facilitates the modeling of emotional fluctuations across multiple rounds of dialogue, thus fulfilling the mandate of emotion prediction. The evaluation of the model against the DailyDialog dataset demonstrates its superiority over the conventional end-to-end model in terms of loss and confusion values. Achieving an accuracy rate of 84.4%, the model substantiates that embedding emotional cues within dialogues augments response generation. The proposed emotion generation model augments emotional discourse and learning efficacy within online physical education, offering fresh avenues for refining and advancing emotion generation models.https://peerj.com/articles/cs-1814.pdfOnline physical education teachingTeacher-student interactionData miningEmotion generation model
spellingShingle Yanwei Zhao
Xiangyun Kong
Wei Zheng
Shahbaz Ahmad
Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
PeerJ Computer Science
Online physical education teaching
Teacher-student interaction
Data mining
Emotion generation model
title Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
title_full Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
title_fullStr Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
title_full_unstemmed Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
title_short Emotion generation method in online physical education teaching based on data mining of teacher-student interactions
title_sort emotion generation method in online physical education teaching based on data mining of teacher student interactions
topic Online physical education teaching
Teacher-student interaction
Data mining
Emotion generation model
url https://peerj.com/articles/cs-1814.pdf
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AT xiangyunkong emotiongenerationmethodinonlinephysicaleducationteachingbasedondataminingofteacherstudentinteractions
AT weizheng emotiongenerationmethodinonlinephysicaleducationteachingbasedondataminingofteacherstudentinteractions
AT shahbazahmad emotiongenerationmethodinonlinephysicaleducationteachingbasedondataminingofteacherstudentinteractions