Predicting Mathematical Performance: The Effect of Cognitive Processes and Self-Regulation Factors
Author(s) -
Mariel Musso,
Eva Kyndt,
Eduardo Cascallar,
Filip Dochy
Publication year - 2012
Publication title -
education research international
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.29
H-Index - 5
eISSN - 2090-4002
pISSN - 2090-4010
DOI - 10.1155/2012/250719
Subject(s) - cognition , artificial neural network , computer science , quality (philosophy) , sample (material) , accountability , range (aeronautics) , cognitive psychology , machine learning , psychology , artificial intelligence , engineering , philosophy , chemistry , epistemology , chromatography , neuroscience , political science , law , aerospace engineering
A substantial number of research studies have investigated the separate influence of working memory, attention, motivation, and learning strategies on mathematical performance and self-regulation in general. There is still little understanding of their impact on performance when taken together, understanding their interactions, and how much each of them contributes to the prediction of mathematical performance. With the emergence of new methodologies and technologies, such as the modelling with predictive systems, it is now possible to study these effects with approaches which use a wide range of data, including student characteristics, to estimate future performance without the need of traditional testing (Boekaerts and Cascallar, 2006). This research examines the different cognitive patterns and complex relations between cognitive variables, motivation, and background variables associated with different levels of mathematical performance using artificial neural networks (ANNs). A sample of 800 entering university students was used to develop three ANN models to identify the expected future level of performance in a mathematics test. These ANN models achieved high degree of precision in the correct classification of future levels of performance, showing differences in the pattern of relative predictive weight amongst those variables. The impact on educational quality, improvement, and accountability is highlighted
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