Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation

Matrix factorization has now become a dominant solution for personalized recommendation on the Social Web. To alleviate the cold start problem, previous approaches have incorporated various additional sources of information into traditional matrix factorization models. These upgraded models, however...

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Main Authors: Xu, Z, Yuan, D, Lukasiewicz, T, Chen, C, Miao, Y, Xu, G
Format: Conference item
Language:English
Published: IEEE Digital Library 2020
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author Xu, Z
Yuan, D
Lukasiewicz, T
Chen, C
Miao, Y
Xu, G
author_facet Xu, Z
Yuan, D
Lukasiewicz, T
Chen, C
Miao, Y
Xu, G
author_sort Xu, Z
collection OXFORD
description Matrix factorization has now become a dominant solution for personalized recommendation on the Social Web. To alleviate the cold start problem, previous approaches have incorporated various additional sources of information into traditional matrix factorization models. These upgraded models, however, achieve only "marginal" enhancements on the performance of personalized recommendation. Therefore, inspired by the recent development of deep-semantic modeling, we propose a hybrid deep-semantic matrix factorization (HDMF) model to further improve the performance of tag-aware personalized recommendation by integrating the techniques of deep-semantic modeling, hybrid learning, and matrix factorization. Experimental results show that HDMF significantly outperforms the state-of-the-art baselines in tag-aware personalized recommendation, in terms of all evaluation metrics.
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spelling oxford-uuid:076a9f66-eeb2-4c05-acc8-2ec20f99a8132022-03-26T09:07:27ZHybrid deep-semantic matrix factorization for tag-aware personalized recommendationConference itemhttp://purl.org/coar/resource_type/c_5794uuid:076a9f66-eeb2-4c05-acc8-2ec20f99a813EnglishSymplectic ElementsIEEE Digital Library2020Xu, ZYuan, DLukasiewicz, TChen, CMiao, YXu, GMatrix factorization has now become a dominant solution for personalized recommendation on the Social Web. To alleviate the cold start problem, previous approaches have incorporated various additional sources of information into traditional matrix factorization models. These upgraded models, however, achieve only "marginal" enhancements on the performance of personalized recommendation. Therefore, inspired by the recent development of deep-semantic modeling, we propose a hybrid deep-semantic matrix factorization (HDMF) model to further improve the performance of tag-aware personalized recommendation by integrating the techniques of deep-semantic modeling, hybrid learning, and matrix factorization. Experimental results show that HDMF significantly outperforms the state-of-the-art baselines in tag-aware personalized recommendation, in terms of all evaluation metrics.
spellingShingle Xu, Z
Yuan, D
Lukasiewicz, T
Chen, C
Miao, Y
Xu, G
Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title_full Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title_fullStr Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title_full_unstemmed Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title_short Hybrid deep-semantic matrix factorization for tag-aware personalized recommendation
title_sort hybrid deep semantic matrix factorization for tag aware personalized recommendation
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AT yuand hybriddeepsemanticmatrixfactorizationfortagawarepersonalizedrecommendation
AT lukasiewiczt hybriddeepsemanticmatrixfactorizationfortagawarepersonalizedrecommendation
AT chenc hybriddeepsemanticmatrixfactorizationfortagawarepersonalizedrecommendation
AT miaoy hybriddeepsemanticmatrixfactorizationfortagawarepersonalizedrecommendation
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