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Predictive Feature Generation and Selection Using Process Data From PISA Interactive Problem-Solving Items: An Application of Random Forests

机译:使用PISA交互式问题解决项目的过程数据的预测特征生成和选择:随机林的应用

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The Programme for International Student Assessment (PISA) introduced the measurement of problem-solving skills in the 2012 cycle. The items in this new domain employ scenario-based environments in terms of students interacting with computers. Process data collected from log files are a record of students’ interactions with the testing platform. This study suggests a two-stage approach for generating features from process data and selecting the features that predict students’ responses using a released problem-solving item—the Climate Control Task. The primary objectives of the study are (1) introducing an approach for generating features from the process data and using them to predict the response to this item, and (2) finding out which features have the most predictive value. To achieve these goals, a tree-based ensemble method, the random forest algorithm, is used to explore the association between response data and predictive features. Also, features can be ranked by importance in terms of predictive performance. This study can be considered as providing an alternative way to analyze process data having a pedagogical purpose.
机译:国际学生评估计划(PISA)介绍了2012年循环中的解决问题技能的测量。在与计算机交互的学生方面,这个新域中的项目采用了基于场景的环境。从日志文件收集的过程数据是学生与测试平台的交互的记录。本研究表明,一种用于生成过程数据的功能的两阶段方法,并选择使用释放的问题解决项目 - 气候控制任务来选择预测学生响应的功能。该研究的主要目标是(1)引入一种用于从过程数据生成功能的方法,并使用它们来预测对该项目的响应,并找到哪些功能具有最高预测值。为实现这些目标,使用基于树的集合方法,随机林算法,用于探索响应数据和预测功能之间的关联。此外,在预测性能方面,特征可以在重要性中排名。该研究可以被认为是提供分析具有教学目的的过程数据的替代方法。

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