基于EdNet用户在线学习行为的特征关联分析与分类

Ying Xie, Jiangtao Huang, Jiafu Liu
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引用次数: 0

摘要

在线学习已经成为一种越来越受欢迎的学习方式。为了提高用户的在线学习体验和学习效果,对用户在线学习行为的分析已成为教育大数据领域的热点问题。本研究在EdNet数据集的基础上,随机抽取部分用户,统计这些用户的回答得分、运行时间等学习行为数据,提取特征。同时,基于EdNet原始数据计算题目难度特征,构建用户完成难度特征。通过提取和构造用户学习行为的特征,利用随机森林模型对用户水平进行分类和预测。实验结果表明,在用户等级分类问题上,用户完成难度特征有利于模型的性能。这也证实了问题的难度特征与用户的学习效果有很大的关系。此外,本研究还为用户提供了一些提高学习绩效的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Features Correlation Analysis and Classification based on EdNet User Online Learning Behavior
Online learning has become an increasingly popular way of learning. In order to improve users' online learning experience and learning effectiveness, analysis on users' online learning behavior has become a hot issue in the field of education big data. Based on the EdNet data set, this research randomly selects some users, counts these user's answer scores, elapsed time and other learning behavior data, and then extracts feature. Meanwhile, features of questions difficulty are calculated on the basis of the EdNet raw data, and construct user completion difficulty features. By extracting and constructing the features of users' learning behavior, a random forest model is used to classify and predict the user's level. The experimental result shows that, on the issue of classifying user's level, the user completion difficulty features are conducive to model performance. It also confirms that the features of questions difficulty has a great relationship with user's learning effectiveness. Moreover, this research gives some suggestions for users to improve their learning performance.
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