Biclustering of Log Data: Insights from a Computer-Based Complex Problem Solving Assessment.

IF 2.8 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Xin Xu, Susu Zhang, Jinxin Guo, Tao Xin
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引用次数: 0

Abstract

Computer-based assessments provide the opportunity to collect a new source of behavioral data related to the problem-solving process, known as log file data. To understand the behavioral patterns that can be uncovered from these process data, many studies have employed clustering methods. In contrast to one-mode clustering algorithms, this study utilized biclustering methods, enabling simultaneous classification of test takers and features extracted from log files. By applying the biclustering algorithms to the "Ticket" task in the PISA 2012 CPS assessment, we evaluated the potential of biclustering algorithms in identifying and interpreting homogeneous biclusters from the process data. Compared with one-mode clustering algorithms, the biclustering methods could uncover clusters of individuals who are homogeneous on a subset of feature variables, holding promise for gaining fine-grained insights into students' problem-solving behavior patterns. Empirical results revealed that specific subsets of features played a crucial role in identifying biclusters. Additionally, the study explored the utilization of biclustering on both the action sequence data and timing data, and the inclusion of time-based features enhanced the understanding of students' action sequences and scores in the context of the analysis.

日志数据的双聚类:基于计算机的复杂问题解决能力评估的启示。
基于计算机的评估为收集与问题解决过程相关的行为数据(即日志文件数据)提供了一个新的来源。为了了解从这些过程数据中可以发现的行为模式,许多研究都采用了聚类方法。与单模式聚类算法不同,本研究采用了双聚类方法,可同时对测试者和从日志文件中提取的特征进行分类。通过将双聚类算法应用于 PISA 2012 CPS 评估中的 "票务 "任务,我们评估了双聚类算法在从过程数据中识别和解释同质双聚类方面的潜力。与单模式聚类算法相比,双聚类方法可以发现在特征变量子集上具有同质性的个体聚类,从而有望深入了解学生解决问题的行为模式。实证结果表明,特定的特征子集在识别双聚类中发挥了关键作用。此外,该研究还探索了如何在动作序列数据和计时数据中使用双聚类,在分析中加入基于时间的特征增强了对学生动作序列和分数的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Intelligence
Journal of Intelligence Social Sciences-Education
CiteScore
2.80
自引率
17.10%
发文量
0
审稿时长
11 weeks
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