PCCF: Periodic and continual temporal co-factorization for recommender systems
Rating-only collaborative filtering has been extensively studied for decades with great improvements achieved in predicting a user’s preference on a target item at a particular time point. Yet, it remains a research challenge on how to capture users’ rating patterns which may drift over time. In thi...
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sg-smu-ink.sis_research-58632020-01-23T07:06:29Z PCCF: Periodic and continual temporal co-factorization for recommender systems GUO, Guibing ZHU, Feida QU, Shilin WANG, Xingwei Rating-only collaborative filtering has been extensively studied for decades with great improvements achieved in predicting a user’s preference on a target item at a particular time point. Yet, it remains a research challenge on how to capture users’ rating patterns which may drift over time. In this article, we propose a time-aware matrix co-factorization model, called PCCF, which considers two types of temporal effects, i.e., periodic and continual. Specifically, periodic effects refer to the impact of discrete periodic time slices with which users’ preferences may be associated, and continual effects refer to the impact of continuous gradual time over which users’ preference patterns may change. The fact that users exhibit different preference patterns with respect to different time aspect has been further confirmed by our analysis on three real-world data sets. Together with time-based user biases, we integrate the two kinds of temporal effects into a unified matrix factorization model. Experimental results on the three data sets demonstrate the effectiveness of both kinds of temporal effects for rating prediction as well as the superiority of our approach’s performance over that of the other counterparts. 2018-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4860 info:doi/10.1016/j.ins.2018.01.019 https://ink.library.smu.edu.sg/context/sis_research/article/5863/viewcontent/PCCF_av.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 Continual effect Periodic effect Rating timestamps Recommender systems Temporal model Co-factorization model Databases and Information Systems |
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Continual effect Periodic effect Rating timestamps Recommender systems Temporal model Co-factorization model Databases and Information Systems GUO, Guibing ZHU, Feida QU, Shilin WANG, Xingwei PCCF: Periodic and continual temporal co-factorization for recommender systems |
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Rating-only collaborative filtering has been extensively studied for decades with great improvements achieved in predicting a user’s preference on a target item at a particular time point. Yet, it remains a research challenge on how to capture users’ rating patterns which may drift over time. In this article, we propose a time-aware matrix co-factorization model, called PCCF, which considers two types of temporal effects, i.e., periodic and continual. Specifically, periodic effects refer to the impact of discrete periodic time slices with which users’ preferences may be associated, and continual effects refer to the impact of continuous gradual time over which users’ preference patterns may change. The fact that users exhibit different preference patterns with respect to different time aspect has been further confirmed by our analysis on three real-world data sets. Together with time-based user biases, we integrate the two kinds of temporal effects into a unified matrix factorization model. Experimental results on the three data sets demonstrate the effectiveness of both kinds of temporal effects for rating prediction as well as the superiority of our approach’s performance over that of the other counterparts. |
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GUO, Guibing ZHU, Feida QU, Shilin WANG, Xingwei |
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GUO, Guibing ZHU, Feida QU, Shilin WANG, Xingwei |
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GUO, Guibing |
title |
PCCF: Periodic and continual temporal co-factorization for recommender systems |
title_short |
PCCF: Periodic and continual temporal co-factorization for recommender systems |
title_full |
PCCF: Periodic and continual temporal co-factorization for recommender systems |
title_fullStr |
PCCF: Periodic and continual temporal co-factorization for recommender systems |
title_full_unstemmed |
PCCF: Periodic and continual temporal co-factorization for recommender systems |
title_sort |
pccf: periodic and continual temporal co-factorization for recommender systems |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2018 |
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https://ink.library.smu.edu.sg/sis_research/4860 https://ink.library.smu.edu.sg/context/sis_research/article/5863/viewcontent/PCCF_av.pdf |
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