4.5 Article

Early-warning prediction of student performance and engagement in open book assessment by reading behavior analysis

Publisher

SPRINGER
DOI: 10.1186/s41239-022-00348-4

Keywords

Early warning prediction; Open-book assessment; Reading behavior; Student modeling

Funding

  1. JSPS [20H01722, 21K19824, 16H06304]
  2. NEDO [JPNP20006, JPNP18013]

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Digitized learning materials play a crucial role in modern education. This paper examines students' reading behavior during an open-book test using a digital textbook system, aiming to predict their performance and engagement. The study finds that strategies like revising and previewing can indicate students' performance in an open ebook assessment, and predicting overall engagement has higher accuracy compared to performance.
Digitized learning materials are a core part of modern education, and analysis of the use can offer insight into the learning behavior of high and low performing students. The topic of predicting student characteristics has gained a lot of attention in recent years, with applications ranging from affect to performance and at-risk student prediction. In this paper, we examine students reading behavior using a digital textbook system while taking an open-book test from the perspective of engagement and performance to identify the strategies that are used. We create models to predict the performance and engagement of learners before the start of the assessment and extract reading behavior characteristics employed before and after the start of the assessment in a higher education setting. It was found that strategies, such as: revising and previewing are indicators of how a learner will perform in an open ebook assessment. Low performing students take advantage of the open ebook policy of the assessment and employ a strategy of searching for information during the assessment. Also compared to performance, the prediction of overall engagement has a higher accuracy, and therefore could be more appropriate for identifying intervention candidates as an early-warning intervention system.

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