通过学习行为分析挖掘在线学习者档案

Bing Wu, Jun Xiao
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引用次数: 6

摘要

用户档案是描述用户兴趣和偏好的有效模型。在学习领域,学习者的特征应该满足学习和教学的需求,如学习模式识别或绩效预测。用户行为分析是构建用户档案的常用方法。统计数据表明,在线学习活动是不连续的和多样化的。通过对学习活动数据的仔细分析,我们发现回访行为是一种频繁的活动,它揭示了学习者意图的真相。在本研究中,我们利用上海开放大学的学习平台作为我们研究的数据源,采用机器学习方法发现学习活动的隐藏模式,并建立在线学习者档案。统计数据显示,15.68%的访问活动为回访问。我们发现三种学习模式具有不同数量的反向访问行为和学习路径。与此同时,他们还涉及到许多因素,包括人口统计、专业类型和学习者参与学习的领域。通过学习者档案,我们可以预测本研究中发现的学习者的学习模式。在本研究的结论中,我们建议在学习投入中考虑学习路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining online learner profile through learning behavior analysis
User profile is an effective model to describe the user's interests and preferences. In the learning field, learner profile should meet the demand of learning and teaching such as learning patterns recognition or performance prediction. Analysis of user's behaviors is the common way to build user profile. Statistics show that online learning activities are incontinuous and diverse. By taking a closer look at the learning activity data, we found back accessing behavior is a frequent activity and reveals the truth of learners' intention. In this study, we make use of Shanghai Open University's learning platform as the data source for our research, adopt machine learning method to find the hidden patterns of learning activities and build the online learner profile. Statistics show that 15.68% of the accessing activities are back accessing. We found three learning patterns with different amount of back accessing behaviors and learning paths. Meanwhile, they relate to many factors including demographics, major type and area where learners join in learning. Through learner profile, we can predict learner's learning pattern which we found in this study. In the conclusion of our study, we suggest that learning path should be taken into consideration of learning engagement.
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