Improving Item Ranking by Leveraging Dual Roles Influence

Ranking items to users is a typical recommendation task, which evaluates users' preferences for certain items over others. Easy access to social networks has motivated researchers to incorporating trust information for recommendation. In this paper, aiming at offering fundamental support to the...

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Main Authors: Ke Xu, Yangjun Xu, Huaqing Min, Yi Cai
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8485794/
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author Ke Xu
Yangjun Xu
Huaqing Min
Yi Cai
author_facet Ke Xu
Yangjun Xu
Huaqing Min
Yi Cai
author_sort Ke Xu
collection DOAJ
description Ranking items to users is a typical recommendation task, which evaluates users' preferences for certain items over others. Easy access to social networks has motivated researchers to incorporating trust information for recommendation. In this paper, aiming at offering fundamental support to the trust-based research for item recommendation, we conduct an in-depth analysis on Epinions, Ciao, and FilmTrust data sets. We find that a user's selection of an item is influenced not only by her trustees but also by her trusters. We leverage this “dual roles influence”to derive two more accurate matrix factorization (MF)-based ranking models, namely, BPRDR and FSDR, respectively. In more detail, the first BPRDR model performs three pairwise preferences comparisons under the Bayesian personal ranking framework, considering the dual roles influence in its ranking assumptions. The second FSDR is an improved factored similarity model as it incorporates dual roles influence to contribute its ranking scores. Extensive experiments on three data sets show that it is essential to consider the dual roles influence when generating top-K item recommendation.
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spelling doaj.art-62f0c527bee4430f81fdefd32ed0585c2022-12-21T18:30:36ZengIEEEIEEE Access2169-35362018-01-016574345744610.1109/ACCESS.2018.28738338485794Improving Item Ranking by Leveraging Dual Roles InfluenceKe Xu0https://orcid.org/0000-0002-2265-756XYangjun Xu1Huaqing Min2Yi Cai3Key Laboratory of Robotics and Intelligent Software, South China University of Technology, Guangzhou, ChinaKey Laboratory of Robotics and Intelligent Software, South China University of Technology, Guangzhou, ChinaKey Laboratory of Robotics and Intelligent Software, South China University of Technology, Guangzhou, ChinaKey Laboratory of Robotics and Intelligent Software, South China University of Technology, Guangzhou, ChinaRanking items to users is a typical recommendation task, which evaluates users' preferences for certain items over others. Easy access to social networks has motivated researchers to incorporating trust information for recommendation. In this paper, aiming at offering fundamental support to the trust-based research for item recommendation, we conduct an in-depth analysis on Epinions, Ciao, and FilmTrust data sets. We find that a user's selection of an item is influenced not only by her trustees but also by her trusters. We leverage this “dual roles influence”to derive two more accurate matrix factorization (MF)-based ranking models, namely, BPRDR and FSDR, respectively. In more detail, the first BPRDR model performs three pairwise preferences comparisons under the Bayesian personal ranking framework, considering the dual roles influence in its ranking assumptions. The second FSDR is an improved factored similarity model as it incorporates dual roles influence to contribute its ranking scores. Extensive experiments on three data sets show that it is essential to consider the dual roles influence when generating top-K item recommendation.https://ieeexplore.ieee.org/document/8485794/Bayesian personalized rankingfactored similarity modelitem rankingmatrix factorizationtrust relationships
spellingShingle Ke Xu
Yangjun Xu
Huaqing Min
Yi Cai
Improving Item Ranking by Leveraging Dual Roles Influence
IEEE Access
Bayesian personalized ranking
factored similarity model
item ranking
matrix factorization
trust relationships
title Improving Item Ranking by Leveraging Dual Roles Influence
title_full Improving Item Ranking by Leveraging Dual Roles Influence
title_fullStr Improving Item Ranking by Leveraging Dual Roles Influence
title_full_unstemmed Improving Item Ranking by Leveraging Dual Roles Influence
title_short Improving Item Ranking by Leveraging Dual Roles Influence
title_sort improving item ranking by leveraging dual roles influence
topic Bayesian personalized ranking
factored similarity model
item ranking
matrix factorization
trust relationships
url https://ieeexplore.ieee.org/document/8485794/
work_keys_str_mv AT kexu improvingitemrankingbyleveragingdualrolesinfluence
AT yangjunxu improvingitemrankingbyleveragingdualrolesinfluence
AT huaqingmin improvingitemrankingbyleveragingdualrolesinfluence
AT yicai improvingitemrankingbyleveragingdualrolesinfluence