Personalized E-Learning Recommender System Based on Autoencoders

Through the Internet, learners can access available information on e-learning platforms to facilitate their studies or to acquire new skills. However, finding the right information for their specific needs among the numerous available choices is a tedious task due to information overload. Recommende...

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Main Authors: Lamyae El Youbi El Idrissi, Ismail Akharraz, Abdelaziz Ahaitouf
Format: Article
Language:English
Published: MDPI AG 2023-10-01
Series:Applied System Innovation
Subjects:
Online Access:https://www.mdpi.com/2571-5577/6/6/102
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author Lamyae El Youbi El Idrissi
Ismail Akharraz
Abdelaziz Ahaitouf
author_facet Lamyae El Youbi El Idrissi
Ismail Akharraz
Abdelaziz Ahaitouf
author_sort Lamyae El Youbi El Idrissi
collection DOAJ
description Through the Internet, learners can access available information on e-learning platforms to facilitate their studies or to acquire new skills. However, finding the right information for their specific needs among the numerous available choices is a tedious task due to information overload. Recommender systems are a good solution to personalize e-learning by proposing useful and relevant information adapted to each learner using a set of techniques and algorithms. Collaborative filtering (CF) is one of the techniques widely used in such systems. However, the high dimensions and sparsity of the data are major problems. Since the concept of deep learning has grown in popularity, various studies have emerged to improve this form of filtering. In this work, we used an autoencoder, which is a powerful model in data dimension reduction, feature extraction and data reconstruction, to learn and predict student preferences in an e-learning recommendation system based on collaborative filtering. Experimental results obtained using the database created by Kulkarni et al. show that this model is more accurate and outperforms models based on K-nearest neighbor (KNN), singular value decomposition (SVD), singular value decomposition plus plus (SVD++) and non-negative matrix factorization (NMF) in terms of the root-mean-square error (RMSE) and mean absolute error (MAE).
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spelling doaj.art-349aac4c8708481ea1c330f9a9ea3dc42023-12-22T13:52:33ZengMDPI AGApplied System Innovation2571-55772023-10-016610210.3390/asi6060102Personalized E-Learning Recommender System Based on AutoencodersLamyae El Youbi El Idrissi0Ismail Akharraz1Abdelaziz Ahaitouf2Engineering Sciences Laboratory, Polydisciplinary Faculty of Taza, Sidi Mohamed Ben Abdellah University, Taza 35000, MoroccoMathematical and Informatics Engineering Laboratory, Faculty of Science Agadir, Ibnou Zohr University, Agadir 80000, MoroccoEngineering Sciences Laboratory, Polydisciplinary Faculty of Taza, Sidi Mohamed Ben Abdellah University, Taza 35000, MoroccoThrough the Internet, learners can access available information on e-learning platforms to facilitate their studies or to acquire new skills. However, finding the right information for their specific needs among the numerous available choices is a tedious task due to information overload. Recommender systems are a good solution to personalize e-learning by proposing useful and relevant information adapted to each learner using a set of techniques and algorithms. Collaborative filtering (CF) is one of the techniques widely used in such systems. However, the high dimensions and sparsity of the data are major problems. Since the concept of deep learning has grown in popularity, various studies have emerged to improve this form of filtering. In this work, we used an autoencoder, which is a powerful model in data dimension reduction, feature extraction and data reconstruction, to learn and predict student preferences in an e-learning recommendation system based on collaborative filtering. Experimental results obtained using the database created by Kulkarni et al. show that this model is more accurate and outperforms models based on K-nearest neighbor (KNN), singular value decomposition (SVD), singular value decomposition plus plus (SVD++) and non-negative matrix factorization (NMF) in terms of the root-mean-square error (RMSE) and mean absolute error (MAE).https://www.mdpi.com/2571-5577/6/6/102personalized recommender systemcollaborative filtering (CF)e-learningSVDSVD++KNN
spellingShingle Lamyae El Youbi El Idrissi
Ismail Akharraz
Abdelaziz Ahaitouf
Personalized E-Learning Recommender System Based on Autoencoders
Applied System Innovation
personalized recommender system
collaborative filtering (CF)
e-learning
SVD
SVD++
KNN
title Personalized E-Learning Recommender System Based on Autoencoders
title_full Personalized E-Learning Recommender System Based on Autoencoders
title_fullStr Personalized E-Learning Recommender System Based on Autoencoders
title_full_unstemmed Personalized E-Learning Recommender System Based on Autoencoders
title_short Personalized E-Learning Recommender System Based on Autoencoders
title_sort personalized e learning recommender system based on autoencoders
topic personalized recommender system
collaborative filtering (CF)
e-learning
SVD
SVD++
KNN
url https://www.mdpi.com/2571-5577/6/6/102
work_keys_str_mv AT lamyaeelyoubielidrissi personalizedelearningrecommendersystembasedonautoencoders
AT ismailakharraz personalizedelearningrecommendersystembasedonautoencoders
AT abdelazizahaitouf personalizedelearningrecommendersystembasedonautoencoders