Problem Analysis and Legal Protection of the Exercise of Teachers’ Educational Disciplinary Rights Based on the Background of Big Data

Junchen Liu
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Abstract

Abstract The right of education and discipline is an important way of school education and teaching management, teachers to fulfill the teaching and educating people, the implementation of the fundamental task of moral education. This paper firstly discusses the dilemma of exercising the right to discipline teachers in education, and also analyzes the legal nature of the right to discipline in education and the impact on the emotional performance of teachers and students in the process of exercising the right. Secondly, cochlear filtering combined with CNN and LSTM network is introduced to extract the speech characteristics of teachers in the process of exercising the right of education and discipline, and a hybrid neural network model is used to realize the recognition and prediction of students’ auditory emotions. Finally, in order to verify the effectiveness of the method of this paper, experimental test analysis was carried out, and a comprehensive rule of law guarantee proposal was given in the process of exercising the right of teachers’ educational discipline. The results show that the maximum value of the intensity of the teacher’s speech signal after processing using the cochlear filter is 78.28dB, and the difference with the original signal is only 0.32%. The accuracy of recognizing students’ auditory emotions reached 90.48% after over 50 iterations. Under the background of big data, the right to discipline teachers in education needs to be analyzed with the help of technology for the data analysis of the appropriateness of exercise, and it is united in a number of aspects, such as strengthening the legislation, standardizing the implementation, strengthening the supervision, and perfecting the relief, as a way to help the comprehensive rule of law operation of the right to discipline teachers in education.
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基于大数据背景下教师教育惩戒权行使的问题分析与法律保障
教育纪律权是学校教育教学管理的重要途径,是教师履行教书育人、实施德育的根本任务。本文首先论述了教师教育惩戒权行使的困境,并分析了教师教育惩戒权的法律性质以及在教师教育惩戒权行使过程中对教师和学生情感表现的影响。其次,引入人工耳蜗滤波结合CNN和LSTM网络提取教师在行使教育训导权过程中的言语特征,并采用混合神经网络模型实现对学生听觉情绪的识别和预测。最后,为了验证本文方法的有效性,进行了实验测试分析,并在教师教育惩戒权行使过程中给出了全面的法治化保障建议。结果表明,经人工耳蜗滤波器处理后的教师语音信号强度最大值为78.28dB,与原始信号的差值仅为0.32%。经过50多次迭代,对学生听觉情绪的识别准确率达到90.48%。在大数据背景下,需要借助技术手段对教育惩戒权进行分析,对行使的适当性进行数据分析,并在加强立法、规范实施、加强监督、完善救济等多个方面进行统一,以助力教育惩戒权全面法治化运行。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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