Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches
Top-k recommendation seeks to deliver a personalized list of k items to each individual user. An established methodology in the literature based on matrix factorization (MF), which usually represents users and items as vectors in low-dimensional space, is an effective approach to recommender systems...
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sg-smu-ink.sis_research-70492021-08-03T08:12:18Z Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches LE, Duy Dung LAUW, Hady W. Top-k recommendation seeks to deliver a personalized list of k items to each individual user. An established methodology in the literature based on matrix factorization (MF), which usually represents users and items as vectors in low-dimensional space, is an effective approach to recommender systems, thanks to its superior performance in terms of recommendation quality and scalability. A typical matrix factorization recommender system has two main phases: preference elicitation and recommendation retrieval. The former analyzes user-generated data to learn user preferences and item characteristics in the form of latent feature vectors, whereas the latter ranks the candidate items based on the learnt vectors and returns the top-k items from the ranked list. For preference elicitation, there have been numerous works to build accurate MF-based recommendation algorithms that can learn from large datasets. However, for the recommendation retrieval phase, naively scanning a large number of items to identify the few most relevant ones may inhibit truly real-time applications. In this work, we survey recent advances and state-of-the-art approaches in the literature that enable fast and accurate retrieval for MF-based personalized recommendations. Also, we include analytical discussions of approaches along different dimensions to provide the readers with a more comprehensive understanding of the surveyed works. 2021-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6052 info:doi/10.1613/jair.1.12403 https://ink.library.smu.edu.sg/context/sis_research/article/7049/viewcontent/jair21.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Databases and Information Systems Data Storage Systems |
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Databases and Information Systems Data Storage Systems LE, Duy Dung LAUW, Hady W. Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
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Top-k recommendation seeks to deliver a personalized list of k items to each individual user. An established methodology in the literature based on matrix factorization (MF), which usually represents users and items as vectors in low-dimensional space, is an effective approach to recommender systems, thanks to its superior performance in terms of recommendation quality and scalability. A typical matrix factorization recommender system has two main phases: preference elicitation and recommendation retrieval. The former analyzes user-generated data to learn user preferences and item characteristics in the form of latent feature vectors, whereas the latter ranks the candidate items based on the learnt vectors and returns the top-k items from the ranked list. For preference elicitation, there have been numerous works to build accurate MF-based recommendation algorithms that can learn from large datasets. However, for the recommendation retrieval phase, naively scanning a large number of items to identify the few most relevant ones may inhibit truly real-time applications. In this work, we survey recent advances and state-of-the-art approaches in the literature that enable fast and accurate retrieval for MF-based personalized recommendations. Also, we include analytical discussions of approaches along different dimensions to provide the readers with a more comprehensive understanding of the surveyed works. |
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LE, Duy Dung LAUW, Hady W. |
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LE, Duy Dung LAUW, Hady W. |
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LE, Duy Dung |
title |
Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
title_short |
Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
title_full |
Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
title_fullStr |
Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
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Efficient retrieval of matrix factorization-based top-k recommendations: A survey of recent approaches |
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efficient retrieval of matrix factorization-based top-k recommendations: a survey of recent approaches |
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Institutional Knowledge at Singapore Management University |
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2021 |
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https://ink.library.smu.edu.sg/sis_research/6052 https://ink.library.smu.edu.sg/context/sis_research/article/7049/viewcontent/jair21.pdf |
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