How can valid and reliable automatic formative assessment predict the acquisition of learning outcomes?

Author:

Divjak Blaženka1ORCID,Svetec Barbi1ORCID,Horvat Damir1ORCID

Affiliation:

1. Faculty of Organization and Informatics University of Zagreb Varaždin Croatia

Abstract

AbstractBackgroundSound learning design should be based on the constructive alignment of intended learning outcomes (LOs), teaching and learning activities and formative and summative assessment. Assessment validity strongly relies on its alignment with LOs. Valid and reliable formative assessment can be analysed as a predictor of students' academic performance, but the question is how significant its predictive power is, and what other elements can affect predictions.ObjectivesOur aim was to investigate the predictive power of formative assessment for summative assessment, measuring the acquisition of LOs.MethodsWe analysed formative assessment results (quizzes, homework), together with log data (video and other material use, class attendance), to determine the most influential predictors and establish a reliable predictive learning analytics model. We used the Random Forest algorithm. The model is based on the data from two university mathematical courses, delivered at different years and levels of study, incorporating 813 students in two consecutive years.Results and ConclusionsOur results show that formative assessment, together with previous summative assessment, is a stronger predictor of summative assessment results than other data on students' engagement. The study pointed to the importance of completeness and quality of data, and clear links between assessment and LOs when making predictions of student results. It suggested that predictions are less reliable for the lowest and the highest performing students. It was noted that other factors can also affect predictions, like the level of LOs, or factors not easily extracted from digital data, like the learning environment and individual students' strategies.

Funder

Erasmus+

Publisher

Wiley

Reference31 articles.

1. American Educational Research Association American Psychological Association and the National Council on Measurement in Education. (2014).Standards for educational & psychological testing.https://www.aera.net/Publications/Books/Standards-for-Educational-Psychological-Testing-2014-Edition

2. Browsing to learn: How computer and software engineering students use online platforms in learning activities

3. A systematic review of the role of learning analytics in enhancing feedback practices in higher education

4. What the Student Does: teaching for enhanced learning

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