教育4.0 -用机器学习方法培养学生的表现

M. Ciolacu, A. Tehrani, Rick Beer, Heribert Popp
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引用次数: 85

摘要

教育活动越来越多地转移到网上,课程内容也以数字格式提供。这使得数据收集和使用数据来分析学习过程成为可能。对于第四次教育革命,学生的积极互动有助于提高学习质量。机器学习技术最近在使用数据分析和预测方面显示出令人印象深刻的发展步骤。然而,它很少用于评估学习质量。在本文中,我们基于神经网络、支持向量机、决策树和聚类分析进行了分析,以估计学生在考试中的表现,并塑造下一代工业4.0技能人才。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Education 4.0 — Fostering student's performance with machine learning methods
Educational activity is increasingly moving online and course contents are becoming available in digital format. This enables data collection and the use of data for analyzing learning process. For the 4th Revolution in Education, an active and interactive presence of students contributes to a higher learning quality. Machine Learning techniques recently have shown impressive development steps of the use of data analysis and predictions. However, it has been far less used for assessing the learning quality. For this paper we conducted analysis based on neural networks, support vector machine, decision trees and cluster analysis to estimate student's performance at examination and shape the next generation's talent for Industry 4.0 skills.
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