Uncertainty-adjusted recommendation via matrix factorization with weighted losses

In a recommender systems (RSs) dataset, observed ratings are subject to unequal amounts of noise. Some users might be consistently more conscientious in choosing the ratings they provide for the content they consume. Some items may be very divisive and elicit highly noisy reviews. In this article, w...

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Main Authors: ALVES, Rodrigo, LEDENT, Antoine, KLOFT, Marius
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Language:English
Published: Institutional Knowledge at Singapore Management University 2023
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Online Access:https://ink.library.smu.edu.sg/sis_research/8031
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spelling sg-smu-ink.sis_research-90342023-08-11T03:18:03Z Uncertainty-adjusted recommendation via matrix factorization with weighted losses ALVES, Rodrigo LEDENT, Antoine KLOFT, Marius In a recommender systems (RSs) dataset, observed ratings are subject to unequal amounts of noise. Some users might be consistently more conscientious in choosing the ratings they provide for the content they consume. Some items may be very divisive and elicit highly noisy reviews. In this article, we perform a nuclear-norm-based matrix factorization method which relies on side information in the form of an estimate of the uncertainty of each rating. A rating with a higher uncertainty is considered more likely to be erroneous or subject to large amounts of noise, and therefore more likely to mislead the model. Our uncertainty estimate is used as a weighting factor in the loss we optimize. To maintain the favorable scaling and theoretical guarantees coming with nuclear norm regularization even in this weighted context, we introduce an adjusted version of the trace norm regularizer which takes the weights into account. This regularization strategy is inspired from the weighted trace norm which was introduced to tackle nonuniform sampling regimes in matrix completion. Our method exhibits state-of-the-art performance on both synthetic and real life datasets in terms of various performance measures, confirming that we have successfully used the auxiliary information extracted. 2023-07-12T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/8031 info:doi/10.1109/TNNLS.2023.3288769 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Recommendation Systems Matrix Completion Statistical Learning Theory Uncertainty Estimation Nuclear Norm Regularization Databases and Information Systems OS and Networks
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Recommendation Systems
Matrix Completion
Statistical Learning Theory
Uncertainty Estimation
Nuclear Norm Regularization
Databases and Information Systems
OS and Networks
spellingShingle Recommendation Systems
Matrix Completion
Statistical Learning Theory
Uncertainty Estimation
Nuclear Norm Regularization
Databases and Information Systems
OS and Networks
ALVES, Rodrigo
LEDENT, Antoine
KLOFT, Marius
Uncertainty-adjusted recommendation via matrix factorization with weighted losses
description In a recommender systems (RSs) dataset, observed ratings are subject to unequal amounts of noise. Some users might be consistently more conscientious in choosing the ratings they provide for the content they consume. Some items may be very divisive and elicit highly noisy reviews. In this article, we perform a nuclear-norm-based matrix factorization method which relies on side information in the form of an estimate of the uncertainty of each rating. A rating with a higher uncertainty is considered more likely to be erroneous or subject to large amounts of noise, and therefore more likely to mislead the model. Our uncertainty estimate is used as a weighting factor in the loss we optimize. To maintain the favorable scaling and theoretical guarantees coming with nuclear norm regularization even in this weighted context, we introduce an adjusted version of the trace norm regularizer which takes the weights into account. This regularization strategy is inspired from the weighted trace norm which was introduced to tackle nonuniform sampling regimes in matrix completion. Our method exhibits state-of-the-art performance on both synthetic and real life datasets in terms of various performance measures, confirming that we have successfully used the auxiliary information extracted.
format text
author ALVES, Rodrigo
LEDENT, Antoine
KLOFT, Marius
author_facet ALVES, Rodrigo
LEDENT, Antoine
KLOFT, Marius
author_sort ALVES, Rodrigo
title Uncertainty-adjusted recommendation via matrix factorization with weighted losses
title_short Uncertainty-adjusted recommendation via matrix factorization with weighted losses
title_full Uncertainty-adjusted recommendation via matrix factorization with weighted losses
title_fullStr Uncertainty-adjusted recommendation via matrix factorization with weighted losses
title_full_unstemmed Uncertainty-adjusted recommendation via matrix factorization with weighted losses
title_sort uncertainty-adjusted recommendation via matrix factorization with weighted losses
publisher Institutional Knowledge at Singapore Management University
publishDate 2023
url https://ink.library.smu.edu.sg/sis_research/8031
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