基于统计建模和集成学习的课堂教学综合评价模型

Ludi Bai, Zehui Yu, Shifeng Zhang, Kangying Hu, Zhan-yong Chen, Junqi Guo
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引用次数: 1

摘要

教育是城市和社会发展的基础。智慧城市的实现离不开智慧教育的建设。科学技术的发展促进了信息技术在教育领域的普及和蓬勃发展。随着智慧教育的兴起,智能学习和智能评价为课堂教学评价提供了新的思路。本文提出的模型是基于现有的多维、多模态数据集,这些数据集来自课堂内的音频和视频识别,以及运动感知和交互分析。首先设计了基于层次分析法-熵权法的课堂教学评价统计模型和基于AdaBoost算法的课堂教学评价集成学习模型。然后,我们设计了实验来评估所提出的统计模型和集成学习模型的性能。最后,我们在不同的评价指标上通过实验进行比较,选择出较好的模型,并将其整合到我们的课堂教学综合评价模型中,并取得了优异的成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An In-class Teaching Comprehensive Evaluation Model Based on Statistical Modelling and Ensemble Learning
Education is the foundation of our cities' and society's development. The realization of Smart City is inseparable from the construction of Smart Education. The development of science and technology has promoted the popularity and booming of information technology in the education field. With the rise of Smart Education, intelligent learning and evaluation have provided new ideas for in-class teaching evaluation. The model proposed in this article is based on existing multi-dimensional and multi-modal data set from in-class audio and video recognition, as well as movement perception and interaction analysis. We firstly designed a statistical model and an ensemble learning model for in-class teaching evaluation, which are based on Analytic Hierarchy Process - Entropy Weight Method and AdaBoost algorithm respectively. Then, we designed experiments to assess the performance of the proposed statistical model and ensemble learning model. Finally, we compared and selected better models through experiments in different evaluation indicators and combined them into our In-class Teaching Comprehensive Evaluation Model with outstanding performance.
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