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Recommend trustworthy services using interval numbers of four parameters via cloud model for potential users

机译:通过云模型使用四个参数的间隔数为潜在用户推荐可信赖的服务

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How to discover the trustworthy services is a challenge for potential users because of the deficiency of usage experiences and the information overload of QoE (quality of experience) evaluations from consumers. Aiming to the limitations of traditional interval numbers in measuring the trustworthiness of service, this paper proposed a novel service recommendation approach using the interval numbers of four parameters (INF) for potential users. In this approach, a trustworthiness cloud model was established to identify the eigenvalue of INF via backward cloud generator, and a new formula of INF possibility degree based on geometrical analysis was presented to ensure the high calculation precision. In order to select the highly valuable QoE evaluations, the similarity of client-side feature between potential user and consumers was calculated, and the multi-attributes trustworthiness values were aggregated into INF by the fuzzy analytic hierarchy process method. On the basis of ranking INF, the sort values of trustworthiness of candidate services were obtained, and the trustworthy services were chosen to recommend to potential user. The experiments based on a real-world dataset showed that it can improve the recommendation accuracy of trustworthy services compared to other approaches, which contributes to solving cold start and information overload problem in service recommendation.
机译:由于缺乏使用体验以及消费者对QoE(体验质量)评估的信息过多,如何发现可信赖的服务是潜在用户面临的挑战。针对传统区间数在度量服务可信度方面的局限性,提出了一种使用四个参数区间数(INF)的潜在用户推荐服务的新方法。该方法建立了一个可信赖的云模型,用于通过后向云生成器识别INF的特征值,并提出了基于几何分析的INF可能性度的新公式,以确保较高的计算精度。为了选择有价值的QoE评估,计算了潜在用户和消费者之间客户端功能的相似度,并通过模糊层次分析法将多属性可信度值汇总到INF中。在对INF进行排序的基础上,获得候选服务可信度的排序值,并选择可信服务推荐给潜在用户。基于真实世界数据集的实验表明,与其他方法相比,它可以提高可信服务的推荐精度,有助于解决服务推荐中的冷启动和信息过载问题。

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