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An Online Personalized Reputation Estimation Model for Service-Oriented Systems

机译:面向服务系统的在线个性化信誉评估模型

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摘要

In service-oriented computing environments, many Web services are provided for users to build service-oriented systems. Since the performance of the same Web service is different from different users' perspectives, users have to personally select the optimal Web services according to quality-of-service(QoS) data observed by other similar users. However, users with low reputations will provide unreliable data, which will have a negative impact on service selection. Moreover, the QoS data vary over time due to changes in user reputation. Therefore, how to estimate a personalized reputation for each user at runtime remains a significant problem. To address this critical challenge, this paper proposes an online reputation estimation method, called OPRE, to efficiently provide a personalized reputation for each user. Based on the users' observed QoS data, OPRE employs matrix factorization and online learning techniques to estimate personalized reputations. The experimental results show that OPRE has high effectiveness compared to other approaches.
机译:在面向服务的计算环境中,为用户提供了许多Web服务以构建面向服务的系统。由于同一Web服务的性能从不同用户的角度来看是不同的,因此用户必须根据其他相似用户观察到的服务质量(QoS)数据亲自选择最佳Web服务。但是,信誉低的用户将提供不可靠的数据,这将对服务选择产生负面影响。此外,由于用户信誉的变化,QoS数据会随时间变化。因此,如何在运行时估计每个用户的个性化声誉仍然是一个重大问题。为了解决这一关键挑战,本文提出了一种在线信誉评估方法,称为OPRE,可以有效地为每个用户提供个性化的声誉。根据用户观察到的QoS数据,OPRE采用矩阵分解和在线学习技术来估计个性化声誉。实验结果表明,与其他方法相比,OPRE具有较高的有效性。

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