Cloud service recommendation based on trust measurement using ternary interval numbers

Hua Ma, Zhi-gang Hu
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引用次数: 11

Abstract

Owing to the deficiency of usage experiences and the information overload of QoE (quality of experience) evaluations from consumers, how to discover the trustworthy cloud services is a challenge for potential users. This paper proposed a cloud service recommendation approach based on trust measurement using ternary interval numbers for potential user. The concept of ternary interval number is introduced. The user feature maybe affecting the QoE evaluations are analyzed and the client-side feature similarity between consumers and potential user is calculated. The transform mechanism from trust evaluations to ternary interval number is presented by employing the K-means clustering algorithm. On the basis of multi-attributes trust aggregation based On FAHP (fuzzy analytic hierarchy process) method, a new possibility degree formula is designed for ranking ternary interval numbers and selecting trustworthy service. Finally, the experiments and results show that this approach is effective to improve the accuracy of the trustworthy service recommendation.
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基于使用三元间隔数的信任度量的云服务推荐
由于用户使用体验的不足和用户体验质量评价的信息过载,如何发现值得信赖的云服务是潜在用户面临的挑战。提出了一种基于信任度量的云服务推荐方法,该方法使用三元区间数对潜在用户进行信任度量。引入了三元区间数的概念。分析了可能影响QoE评估的用户特征,并计算了消费者和潜在用户之间的客户端特征相似性。利用k均值聚类算法,给出了信任值到三元区间数的转换机制。在基于FAHP(模糊层次分析法)的多属性信任聚合的基础上,设计了一种新的可能性度公式,用于对三值区间数进行排序和选择可信服务。实验结果表明,该方法能够有效提高可信服务推荐的准确率。
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