2020
DOI: 10.3390/app10165601
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Optimizing Latent Factors and Collaborative Filtering for Students’ Performance Prediction

Abstract: The problem of predicting students’ performance has been recently tackled by using matrix factorization, a popular method applied for collaborative filtering based recommender systems. This problem consists of predicting the unknown performance or score of a particular student for a task s/he did not complete or did not attend, according to the scores of the tasks s/he did complete and the scores of the colleagues who completed the task in question. The solving method considers matrix factorization and a gradi… Show more

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Cited by 13 publications
(8 citation statements)
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References 46 publications
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“…Next, researchers in [32] used the GD method to optimize the vector centers of the consequent layer functions and receptive field matrices in a neuro-fuzzy model based on the standard criterion of mean square error. Furthermore, GD was also used by [33] for minimizing the equation of error used in the study by updating the W 1 and W 2 matrices in order to solve the predicting student performance (PSP) problem. Researchers in [34] also utilized stochastic GD as one of the machine learning methods to be compared for the inversion of a stochastic skin optical model.…”
Section: Gradient Descentmentioning
confidence: 99%
“…Next, researchers in [32] used the GD method to optimize the vector centers of the consequent layer functions and receptive field matrices in a neuro-fuzzy model based on the standard criterion of mean square error. Furthermore, GD was also used by [33] for minimizing the equation of error used in the study by updating the W 1 and W 2 matrices in order to solve the predicting student performance (PSP) problem. Researchers in [34] also utilized stochastic GD as one of the machine learning methods to be compared for the inversion of a stochastic skin optical model.…”
Section: Gradient Descentmentioning
confidence: 99%
“…Next, researchers in Reference [35] also used GD method to identify the aperture shape in the direct aperture optimization (DAO). Furthermore, this optimization method was also utilized by researchers in Reference [36] to solve the predicting student performance (PSP) by minimizing the error equation, which is its loss function. The study updated the matrices of W 1 and W 2 in the optimization scheme.…”
Section: Gradient Descentmentioning
confidence: 99%
“…For this purpose, they compare traditional content-based recommendations with non-personalized recommendations based on pedagogical quality scores of the resources, as well as hybrid approaches. Also in the educational domain, in this issue we have published [10]. In this work, the authors propose a method for filling out the missing values of evaluation tests that a student may skipped.…”
Section: Real World Recommender Systemsmentioning
confidence: 99%