Recommendation system based on trusted relation transmission

Yixiong Bian, Huakang Li
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引用次数: 1

Abstract

With the rapid development of the internet, applications of recommendation systems for online shops and entertainment platforms become more and more popular. In order to improve the effectiveness of recommendation, external information has been incorporated into various algorithms, such as location and social relationship. However, most algorithms only focus on the introduction of external information without depth analysis of the intrinsic mechanism in the external information. This paper proposed a transfer model of social trusted relationship, and optimized the reliability of the transfer model using pruning algorithm based on original trust recommendation. A credible social relationship macro-transfer model based on iterations of new credible relationships is defined by the similarity of social relationships. With a certain interest topic as a source of information, a micro-transfer model achieves the theme of interest and credibility of the expansion using social information dissemination algorithm. To demonstrate the effectiveness of the macro and micro credible transfer models, we used the Mantra search tree pruning algorithm and the optimization algorithm of similar category replacing similar products. The experimental results show that the proposed method based on the macroscopic and microscopic transfer models of the trusted relationship enhances the success rate and stability of the recommended system.
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基于信任关系传输的推荐系统
随着互联网的快速发展,网上商店和娱乐平台的推荐系统应用越来越广泛。为了提高推荐的有效性,外部信息被纳入到各种算法中,例如位置和社会关系。然而,大多数算法只关注外部信息的引入,而没有深入分析外部信息中的内在机制。提出了一种社会信任关系的转移模型,并利用基于原始信任推荐的剪枝算法对转移模型的可靠性进行了优化。利用社会关系的相似性定义了基于新可信关系迭代的可信社会关系宏观转移模型。微迁移模型以一定的兴趣话题为信息来源,利用社会信息传播算法实现主题的兴趣和可信度的扩展。为了验证宏观和微观可信转移模型的有效性,我们使用了Mantra搜索树修剪算法和相似类别替换相似产品的优化算法。实验结果表明,基于信任关系宏观和微观传递模型的推荐方法提高了推荐系统的成功率和稳定性。
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