TCMF: Trust-Based Context-Aware Matrix Factorization for Collaborative Filtering

Jiyun Li, Caiqi Sun, Juntao Lv
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引用次数: 10

Abstract

Trust-aware recommender system (TARS) can provide more relevant recommendation and more accurate rating predictions than the traditional recommender system by taking the trust network into consideration. However, most of the trust-aware collaborative filtering approaches do not consider the influence of contextual information on rating prediction. To the opposite, context-aware matrix factorization approaches as we know do not take trust information into consideration. In this paper, we propose two Trust-based Context-aware Matrix Factorization (TCMF) approaches to fully capture the influence of trust information and contextual information on ratings. We integrate both trust information and contextual information into the baseline predictors (user bias and item bias) and user-item-context-trust interaction. Evaluations based on a real dataset and three semi-synthetic datasets demonstrate that our approaches can improve the accuracy of the trust-aware collaborative filtering and the context-aware matrix factorization models by at least 10.2% in terms of MAE.
基于信任的协同过滤上下文感知矩阵分解
信任感知推荐系统(TARS)通过考虑信任网络,可以提供比传统推荐系统更相关的推荐和更准确的评级预测。然而,大多数信任感知协同过滤方法没有考虑上下文信息对评级预测的影响。相反,我们所知道的上下文感知矩阵分解方法不考虑信任信息。在本文中,我们提出了两种基于信任的上下文感知矩阵分解(TCMF)方法来充分捕捉信任信息和上下文信息对评分的影响。我们将信任信息和上下文信息集成到基线预测因子(用户偏见和项目偏见)和用户-项目-上下文-信任交互中。基于真实数据集和三个半合成数据集的评估表明,我们的方法可以将信任感知协同过滤和上下文感知矩阵分解模型的MAE精度提高至少10.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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