Subtask Analysis of Process Data Through a Predictive Model

August 29, 2020 Β· Declared Dead Β· πŸ› British Journal of Mathematical & Statistical Psychology

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Authors Zhi Wang, Xueying Tang, Jingchen Liu, Zhiliang Ying arXiv ID 2009.00717 Category cs.HC: Human-Computer Interaction Cross-listed cs.AI, stat.ME Citations 12 Venue British Journal of Mathematical & Statistical Psychology Last Checked 4 months ago
Abstract
Response process data collected from human-computer interactive items contain rich information about respondents' behavioral patterns and cognitive processes. Their irregular formats as well as their large sizes make standard statistical tools difficult to apply. This paper develops a computationally efficient method for exploratory analysis of such process data. The new approach segments a lengthy individual process into a sequence of short subprocesses to achieve complexity reduction, easy clustering and meaningful interpretation. Each subprocess is considered a subtask. The segmentation is based on sequential action predictability using a parsimonious predictive model combined with the Shannon entropy. Simulation studies are conducted to assess performance of the new methods. We use the process data from PIAAC 2012 to demonstrate how exploratory analysis of process data can be done with the new approach.
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