Javascript must be enabled to continue!
Leveraging Distrust Relations to Improve Bayesian Personalized Ranking
View through CrossRef
Distrust based recommender systems have drawn much more attention and became widely acceptable in recent years. Previous works have investigated using trust information to establish better models for rating prediction, but there is a lack of methods using distrust relations to derive more accurate ranking-based models. In this article, we develop a novel model, named TNDBPR (Trust Neutral Distrust Bayesian Personalized Ranking), which simultaneously leverages trust, distrust, and neutral relations for item ranking. The experimental results on Epinions dataset suggest that TNDBPR by leveraging trust and distrust relations can substantially increase various performance evaluations including F1 score, AUC, Precision, Recall, and NDCG.
Title: Leveraging Distrust Relations to Improve Bayesian Personalized Ranking
Description:
Distrust based recommender systems have drawn much more attention and became widely acceptable in recent years.
Previous works have investigated using trust information to establish better models for rating prediction, but there is a lack of methods using distrust relations to derive more accurate ranking-based models.
In this article, we develop a novel model, named TNDBPR (Trust Neutral Distrust Bayesian Personalized Ranking), which simultaneously leverages trust, distrust, and neutral relations for item ranking.
The experimental results on Epinions dataset suggest that TNDBPR by leveraging trust and distrust relations can substantially increase various performance evaluations including F1 score, AUC, Precision, Recall, and NDCG.
Related Results
Sample-efficient Optimization Using Neural Networks
Sample-efficient Optimization Using Neural Networks
<p>The solution to many science and engineering problems includes identifying the minimum or maximum of an unknown continuous function whose evaluation inflicts non-negligibl...
Figs S1-S9
Figs S1-S9
Fig. S1. Consensus phylogram (50 % majority rule) resulting from a Bayesian analysis of the ITS sequence alignment of sequences generated in this study and reference sequences from...
Trust and Distrust in E-Commerce
Trust and Distrust in E-Commerce
Trust is the key ingredient for sustainable transactions. In the concept of trust, the trustor trusts the trustees. In e-commerce, the trustor is the buyer and the trustees are the...
Pharmacogenomics and the Concept of Personalized Medicine for the Management of Hypertension
Pharmacogenomics and the Concept of Personalized Medicine for the Management of Hypertension
Hypertension poses a significant global burden due to low adherence to antihypertensive medications. Hypertension treatment aims to bring blood pressure within physiological ranges...
Distrust of Institutions in Early Modern Britain and America
Distrust of Institutions in Early Modern Britain and America
Abstract
During the sixteenth, seventeenth, and eighteenth centuries an increasingly literate and politically conscious public in England expressed growing distrust ...
Bayesian statistics
Bayesian statistics
Bayesian statistics 478
How Bayesian methods work 480
Prior distributions 482
Likelihoo...
Distrust as a psychological phenomenon
Distrust as a psychological phenomenon
Purpose. The article provides a theoretical analysis of the problem of mistrust as a psychological phenomenon that is closely related to trust.
Methods. To achieve the purpose of t...
Implications of trust and distrust for organizations
Implications of trust and distrust for organizations
PurposeThe purpose of this paper is to examine the associations of societal trust and distrust with customer orientation. This paper also examines the impact of the above associati...

