Aligning dual disentangled user representations from ratings and textual content
Classical recommendation methods typically render user representation as a single vector in latent space. Oftentimes, a user's interactions with items are influenced by several hidden factors. To better uncover these hidden factors, we seek disentangled representations. Existing disentanglement...
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sg-smu-ink.sis_research-86012022-12-22T03:34:35Z Aligning dual disentangled user representations from ratings and textual content TRAN, Nhu Thuat LAUW, Hady Wirawan Classical recommendation methods typically render user representation as a single vector in latent space. Oftentimes, a user's interactions with items are influenced by several hidden factors. To better uncover these hidden factors, we seek disentangled representations. Existing disentanglement methods for recommendations are mainly concerned with user-item interactions alone. To further improve not only the effectiveness of recommendations but also the interpretability of the representations, we propose to learn a second set of disentangled user representations from textual content and to align the two sets of representations with one another. The purpose of this coupling is two-fold. For one benefit, we leverage textual content to resolve sparsity of user-item interactions, leading to higher recommendation accuracy. For another benefit, by regularizing factors learned from user-item interactions with factors learned from textual content, we map uninterpretable dimensions from user representation into words. An attention-based alignment is introduced to align and enrich hidden factors representations. A series of experiments conducted on four real-world datasets show the efficacy of our methods in improving recommendation quality. 2022-08-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/7598 info:doi/10.1145/3534678.3539474 https://ink.library.smu.edu.sg/context/sis_research/article/8601/viewcontent/kdd22b.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 disentangled representation textual content-aware recommender systems user preferences interpretation Numerical Analysis and Scientific Computing Software Engineering |
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disentangled representation textual content-aware recommender systems user preferences interpretation Numerical Analysis and Scientific Computing Software Engineering TRAN, Nhu Thuat LAUW, Hady Wirawan Aligning dual disentangled user representations from ratings and textual content |
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Classical recommendation methods typically render user representation as a single vector in latent space. Oftentimes, a user's interactions with items are influenced by several hidden factors. To better uncover these hidden factors, we seek disentangled representations. Existing disentanglement methods for recommendations are mainly concerned with user-item interactions alone. To further improve not only the effectiveness of recommendations but also the interpretability of the representations, we propose to learn a second set of disentangled user representations from textual content and to align the two sets of representations with one another. The purpose of this coupling is two-fold. For one benefit, we leverage textual content to resolve sparsity of user-item interactions, leading to higher recommendation accuracy. For another benefit, by regularizing factors learned from user-item interactions with factors learned from textual content, we map uninterpretable dimensions from user representation into words. An attention-based alignment is introduced to align and enrich hidden factors representations. A series of experiments conducted on four real-world datasets show the efficacy of our methods in improving recommendation quality. |
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author |
TRAN, Nhu Thuat LAUW, Hady Wirawan |
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TRAN, Nhu Thuat LAUW, Hady Wirawan |
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TRAN, Nhu Thuat |
title |
Aligning dual disentangled user representations from ratings and textual content |
title_short |
Aligning dual disentangled user representations from ratings and textual content |
title_full |
Aligning dual disentangled user representations from ratings and textual content |
title_fullStr |
Aligning dual disentangled user representations from ratings and textual content |
title_full_unstemmed |
Aligning dual disentangled user representations from ratings and textual content |
title_sort |
aligning dual disentangled user representations from ratings and textual content |
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Institutional Knowledge at Singapore Management University |
publishDate |
2022 |
url |
https://ink.library.smu.edu.sg/sis_research/7598 https://ink.library.smu.edu.sg/context/sis_research/article/8601/viewcontent/kdd22b.pdf |
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