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利用信任支持度构建客户信任网络 被引量:4

Building customer trust network using support-trust value
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摘要 利用信任的社会性质进行信任传递,可有效缓解数据稀疏的问题,提高推荐系统的覆盖率和准确率。目前对信任网络的研究存在信任模型建立不准确、信任传递机制复杂与失真等问题。为准确表述信任网络中的客户信任关系,引入信任支持度的概念,提出了一种信任度与信任支持度相结合的客户信任模型;制定了符合信任社会性的传递规则,构建了基于该模型的客户信任网络,并设计了相应的个性化推荐算法。实验结果表明,此模型提高了推荐系统的覆盖率、准确率及推荐质量。 Transferring trust using its own social nature can accuracy of recommender systems. While current researches effectively alleviate the data sparsity problem, and improve coverage and on the trust network suffer some problems, such as inaccurate model con- struction, complicated trust transfer mechanism and distortion, etc. In order to accurately portray the trust relationship between custom- ers in trust networks, this paper introduces the concept of support-trust value to establish a new customer trust model combining trust value with support-trust value, and then makes transfer rules from trust sociality. After that, this paper constructs a customer trust net- work based on this model and designs the corresponding personalized recommendation algorithms. The experimental results show that this model can improve coverage, accuracy and recommendation quality of the recommendation system.
出处 《计算机工程与应用》 CSCD 2012年第6期110-113,共4页 Computer Engineering and Applications
关键词 电子商务 客户信任网络 信任度 信任支持度 E-commerce customer trust network trust value support-trust value
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参考文献9

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同被引文献26

  • 1张光卫,李德毅,李鹏,康建初,陈桂生.基于云模型的协同过滤推荐算法[J].软件学报,2007,18(10):2403-2411. 被引量:191
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  • 10黄创光,印鉴,汪静,刘玉葆,王甲海.不确定近邻的协同过滤推荐算法[J].计算机学报,2010,33(8):1369-1377. 被引量:217

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