A Two-Step Clustering Approach for Improving Educational Process Model Discovery

Hanane Ariouat, Awatef Hicheur Cairns, Kamel Barkaoui, J. Akoka, Nasser Khelifa
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引用次数: 22

Abstract

Process mining refers to the extraction of process models from event logs. As real-life processes tend to be less structured and more flexible, clustering techniques are used to divide traces into clusters, such that similar types of behavior are grouped in the cluster. Educational process mining is an emerging field in the educational data mining (EDM) discipline, concerned with developing methods to better understand students' learning habits and the factors influencing their performance. However, the obtained models, usually, cannot fit well to the general students' behaviour and can be too large and complex for use or analysis by an instructor. These models are called spaghetti models. In the present work, we propose to use a two steps-based approach of clustering to improve educational process mining. The first step consist of creating clusters based employability indicators and the second step consist on clustering the obtained clusters using the AXOR algorithm which is based on traces profiles in order to refine the obtained results from the first step. We have experimented this approach using the tool ProM Framework and we have found that this approach optimizes at the same time, both the performance/suitability and comprehensibility/size of the obtained model.
改进教育过程模型发现的两步聚类方法
流程挖掘是指从事件日志中提取流程模型。由于现实生活中的过程往往结构更少、更灵活,因此使用聚类技术将轨迹划分为集群,以便将相似类型的行为分组在集群中。教育过程挖掘是教育数据挖掘(EDM)学科中的一个新兴领域,涉及开发方法来更好地了解学生的学习习惯及其影响其表现的因素。然而,获得的模型通常不能很好地适应一般学生的行为,并且对于教师的使用或分析来说可能太大太复杂。这些模型被称为意大利面模型。在目前的工作中,我们建议使用基于两步的聚类方法来改进教育过程挖掘。第一步包括创建基于就业能力指标的集群,第二步包括使用基于轨迹轮廓的AXOR算法对获得的集群进行聚类,以便改进从第一步获得的结果。我们已经使用工具ProM Framework对这种方法进行了实验,我们发现这种方法同时优化了所获得模型的性能/适用性和可理解性/大小。
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