An Improved Trust Metric for Trust-Aware Recommender Systems

Zhi-Li Wu, Xue-li Yu, Jingyu Sun
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引用次数: 18

Abstract

Collaborative Filtering (CF) is the most widely used technique for Recommender Systems. However, user similarity alone is not enough for recommendation. We propose that trust is another important issue in recommender systems. Due to data sparsity of the item ratings matrix, we may not find the similar neighbors of the active user and thus CF Recommender Systems often fails in this condition. Taking trust into consideration can alleviate those problems. We consider replacing similarity weight with trust weight by trust propagation over the trust network. And we propose that trust decreases along propagation. A comparison between MoleTrust and our trust metric-DecTrust based on Epinions.com dataset shows that our trust metric can improve the accuracy while keeping coverage.
基于信任感知推荐系统的改进信任度量
协同过滤(CF)是推荐系统中应用最广泛的技术。然而,仅用户相似度不足以进行推荐。我们认为信任是推荐系统中的另一个重要问题。由于项目评分矩阵的数据稀疏性,我们可能找不到活跃用户的相似邻居,因此CF推荐系统经常在这种情况下失败。考虑到信任可以缓解这些问题。通过信任网络上的信任传播,我们考虑用信任权值代替相似权值。我们提出信任会随着传播而减少。MoleTrust与我们基于Epinions.com数据集的信任度量- dectrust的比较表明,我们的信任度量可以在保持覆盖范围的同时提高准确性。
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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