Relationship between teacher's ability model and students' behavior based on emotion-behavior relevance theory and artificial intelligence technology under the background of curriculum ideological and political education

IF 1.7 4区 心理学 Q3 PSYCHOLOGY, BIOLOGICAL Learning and Motivation Pub Date : 2024-09-10 DOI:10.1016/j.lmot.2024.102040
Can Zhao, JianTong Yu
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引用次数: 0

Abstract

Purpose

This paper aims to fully understand the relationship between students' classroom emotions and teachers' behaviors in the teaching environment, provide personalized teaching support, stimulate teachers' motivation, and enhance the emotional connection between teachers and students. This paper designs a teacher's ability model based on emotion-behavior relevance theory and artificial intelligence (AI) technology.

Methods

Firstly, this paper expounds on the integration of emotion-behavior relevance theory, AI, and teacher's ability model under the background of ideological and political education. Subsequently, the artificial neural network (ANN) model is deeply analyzed in relation to the development of psychology and AI technology. Guided by the theory of emotion-behavior relevance, an ANN model is used to optimize the classroom emotion recognition module in the teacher's ability model. The accuracy of the optimized teacher's ability model in recognizing attention and resistance is verified by experiments. The relationship between the teacher's classroom emotions, students' classroom behavior, and the teacher's teaching ability is analyzed.

Results

The experimental results show that the optimized model can effectively identify students' classroom emotions, and the accuracy of identifying attention and resistance reaches 93.6 % and 92 %, respectively, significantly exceeding the traditional model. For other emotions, the accuracy of the experimental group ranges from 80.6 % to 87.9 %, while that of the control group is only 61.1 %. The optimized model shows a better effect on the emotional recognition of multiple students. This proves the effectiveness of the proposed optimization model. In addition, by analyzing teachers' emotions in real classroom videos, people can observe that teachers' psychological emotions and behaviors change with the changes in students' classroom emotions. Under the students' positive emotions, teachers scored high in psychological emotions, behaviors, and teaching achievements, with the lowest scores of 87, 80, and 85, respectively. Under students' negative emotions, teachers' related scores are low, with the highest scores of 40, 40, and 42. This highlights the critical influence of the emotional attitude and values of the main characters on teachers' teaching ability in the classroom environment from the psychological perspective.

Conclusion

Students' positive emotions, such as concentration and devotion, will arouse teachers' satisfaction and happiness, motivate them to teach more diligently, and improve the teaching effect. On the contrary, students' negative emotions, such as resistance and doubt, may cause teachers to feel depressed and discouraged. This proves the importance and effectiveness of integrating the emotion-behavior relevance theory into teaching. Students' emotions impact teachers' psychological emotions and behaviors and affect the teaching effect. In this case, teachers need to use their emotional adjustment ability to adjust their feelings in time to better guide students and improve teaching efficiency. This paper provides valuable insights for optimizing the teacher's ability model.

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课程思想政治教育背景下基于情感行为相关性理论和人工智能技术的教师能力模型与学生行为的关系
目的 本文旨在全面了解教学环境中学生课堂情绪与教师行为之间的关系,提供个性化的教学支持,激发教师的教学积极性,增进师生之间的情感联系。方法首先,本文阐述了思想政治教育背景下情感行为相关性理论、人工智能和教师能力模型的融合。随后,结合心理学和人工智能技术的发展,深入分析了人工神经网络(ANN)模型。在情绪行为相关性理论指导下,利用人工神经网络模型对教师能力模型中的课堂情绪识别模块进行了优化。实验验证了优化后的教师能力模型在识别注意力和抵触情绪方面的准确性。实验结果表明,优化后的模型能有效识别学生的课堂情绪,识别注意力和抵触情绪的准确率分别达到 93.6 % 和 92 %,明显超过传统模型。对于其他情绪,实验组的准确率为 80.6 % 至 87.9 %,而对照组仅为 61.1 %。优化后的模型对多个学生的情绪识别有更好的效果。这证明了所提出的优化模型的有效性。此外,通过分析真实课堂视频中教师的情绪,人们可以观察到教师的心理情绪和行为会随着学生课堂情绪的变化而变化。在学生的积极情绪下,教师的心理情绪、行为和教学成绩得分较高,最低分别为 87 分、80 分和 85 分。在学生的消极情绪下,教师的相关得分较低,最高分分别为 40 分、40 分和 42 分。这从心理学角度凸显了课堂环境中主体人物的情感态度和价值观对教师教学能力的关键影响。结论学生的积极情绪,如专注、投入等,会激发教师的满足感和幸福感,促使教师更加努力地教学,提高教学效果。相反,学生的消极情绪,如抵触、怀疑等,则会使教师感到压抑和气馁。这证明了将情绪行为相关理论融入教学的重要性和有效性。学生的情绪会影响教师的心理情绪和行为,影响教学效果。在这种情况下,教师需要运用自己的情绪调节能力,及时调整自己的情绪,更好地引导学生,提高教学效率。本文为优化教师能力模型提供了有价值的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
53
期刊介绍: Learning and Motivation features original experimental research devoted to the analysis of basic phenomena and mechanisms of learning, memory, and motivation. These studies, involving either animal or human subjects, examine behavioral, biological, and evolutionary influences on the learning and motivation processes, and often report on an integrated series of experiments that advance knowledge in this field. Theoretical papers and shorter reports are also considered.
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