基于深度学习的课堂教师言语意图分类

Xilin Zhang, Jiaqi Wang, Zhenhong Wan, Zuying Luo
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引用次数: 0

摘要

教师用语言来指导课堂教学活动。教师言语的意向自动分类有助于课堂教学过程的定量分析和评价。利用真实中学语文和数学课堂教学中的教师言语构建语料库,训练深度卷积神经网络(CNN)对教师言语进行分类,识别教师主导的教学活动、提问活动和课堂管理活动三种类型。实验数据表明:(1)与经典浅层网络分类算法SVM相比,CNN的分类准确率提高了10%,达到95.5%,能够满足课堂教学过程自动分析的准确率要求;(2)利用CNN分类算法对课堂教学行为进行分类和统计分析,可以为课堂分析和研究提供有用的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Classroom Teachers’ Speech Intention Based on Deep Learning
Teachers use language to guide classroom teaching activities. The automatic classification of teacher speech according to intention is helpful for the quantitative analysis and evaluation of classroom teaching process. Teachers’ speech in real classroom teaching of middle school Chinese and mathematics is used to construct a corpus, and deep convolutional neural network (CNN) is trained to classify teachers’ speech and identify three kinds of teacher-led teaching activities, including teaching, questioning and classroom management. The experimental data show that:(1) compared with the classical shallow network classification algorithm SVM, the classification accuracy of CNN is increased by 10% to 95.5%, which can meet the requirements for accuracy of automatic analysis of classroom teaching process; (2) Classifying and statistical analysis of classroom teaching behaviors by using CNN classification algorithm can provide useful ideas for classroom analysis and research.
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