Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods

Context Aware Recommender Systems (CARS) have become an important research area since its introduction in 2001 by (Herlocker and Konstan, 2001) and (Adomavicius and Tuzhilin, 2001). According to the classification of Adomavicius et al. (Adomavicius and Tuzhilin, 2011), there are three main categorie...

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Main Authors: Fatima Zahra Lahlou, Houda Benbrahim, Ismail Kassou
Format: Article
Language:English
Published: Ecole Mohammadia d'Ingénieurs 2017-11-01
Series:Electronic Journal of Information Technology
Subjects:
Online Access:http://www.revue-eti.net/index.php/eti/article/view/116
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spelling doaj-5a26071411994898b1c4c07928e7d0b82020-11-24T20:50:42ZengEcole Mohammadia d'IngénieursElectronic Journal of Information Technology1114-88021114-88022017-11-01Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based MethodsFatima Zahra Lahlou0Houda Benbrahim1Ismail Kassou2ALBIRONI Research Team, ENSIAS, Mohamed V University, Rabat, Maroc ALBIRONI Research Team, ENSIAS, Mohamed V University, Rabat, Maroc ALBIRONI Research Team, ENSIAS, Mohamed V University, Rabat, Maroc Context Aware Recommender Systems (CARS) have become an important research area since its introduction in 2001 by (Herlocker and Konstan, 2001) and (Adomavicius and Tuzhilin, 2001). According to the classification of Adomavicius et al. (Adomavicius and Tuzhilin, 2011), there are three main categories of CARS algorithms: pre-filtering, post-filtering, and contextual modeling ones. Surprisingly, until the year of 2010, almost no CARS modeling algorithms were proposed, even though contextual modeling recommender systems can theoretically accept more dimensions as contextual variables (Karatzoglou et al., 2010). Starting from 2010, many contextual modeling CARS algorithms were proposed, most of them are built on factorization models. In this paper, we first present a state of the art of domain independent CARS algorithms listed following a chronological order. Then we study factorization models used for the Context Aware Recommendation task and suggest some possible research directions for developing more performing contextual modeling CARS algorithms. http://www.revue-eti.net/index.php/eti/article/view/116Context Aware Recommender SystemsMatrix FactorizationTensor FactorizationFactorization MachinesMachine Learning
collection DOAJ
language English
format Article
sources DOAJ
author Fatima Zahra Lahlou
Houda Benbrahim
Ismail Kassou
spellingShingle Fatima Zahra Lahlou
Houda Benbrahim
Ismail Kassou
Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
Electronic Journal of Information Technology
Context Aware Recommender Systems
Matrix Factorization
Tensor Factorization
Factorization Machines
Machine Learning
author_facet Fatima Zahra Lahlou
Houda Benbrahim
Ismail Kassou
author_sort Fatima Zahra Lahlou
title Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
title_short Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
title_full Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
title_fullStr Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
title_full_unstemmed Context Aware Recommender System Algorithms: State of the Art and Focus on Factorization Based Methods
title_sort context aware recommender system algorithms: state of the art and focus on factorization based methods
publisher Ecole Mohammadia d'Ingénieurs
series Electronic Journal of Information Technology
issn 1114-8802
1114-8802
publishDate 2017-11-01
description Context Aware Recommender Systems (CARS) have become an important research area since its introduction in 2001 by (Herlocker and Konstan, 2001) and (Adomavicius and Tuzhilin, 2001). According to the classification of Adomavicius et al. (Adomavicius and Tuzhilin, 2011), there are three main categories of CARS algorithms: pre-filtering, post-filtering, and contextual modeling ones. Surprisingly, until the year of 2010, almost no CARS modeling algorithms were proposed, even though contextual modeling recommender systems can theoretically accept more dimensions as contextual variables (Karatzoglou et al., 2010). Starting from 2010, many contextual modeling CARS algorithms were proposed, most of them are built on factorization models. In this paper, we first present a state of the art of domain independent CARS algorithms listed following a chronological order. Then we study factorization models used for the Context Aware Recommendation task and suggest some possible research directions for developing more performing contextual modeling CARS algorithms.
topic Context Aware Recommender Systems
Matrix Factorization
Tensor Factorization
Factorization Machines
Machine Learning
url http://www.revue-eti.net/index.php/eti/article/view/116
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AT houdabenbrahim contextawarerecommendersystemalgorithmsstateoftheartandfocusonfactorizationbasedmethods
AT ismailkassou contextawarerecommendersystemalgorithmsstateoftheartandfocusonfactorizationbasedmethods
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