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An SVM-based collaborative filtering approach for Top-N web services recommendation

机译:用于Top-N Web服务推荐的基于SVM的协作过滤方法

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With the development of service-oriented computing (SOC) and cloud computing, Web service has become an important carrier for IT resources delivery. Nowadays, the same function can be provided by numerous services, it becomes difficult for users to find their desired services. So it is necessary to design feasible recommendation strategies to provide users with their expected services. Most existing methods attempt to recommend services according to accurate predictions for the rating or the quality of service (QoS) values. However, because the Internet is dynamic and user ratings are generally subjective, it is almost impossible to accurately predict the QoS or rating. Furthermore, accurate prediction is generally time-consuming. This paper proposes a support vector machine (SVM) based collaborative filtering (CF) service recommendation approach, namely SVMCF4SR. For a user, SVM can acquire a separating hyperplane from the historical rating data, which can filter out the services that may not be preferred by the user. Moreover, the preference degree of a user can be measured directly with the distance between the point representing the service and the separating hyperplane. Thus, according to the preference degree, top-N services can be recommended without the need of prediction for rating or QoS. Both the theory and the experiments show that SVMCF4SR has comparatively higher recommendation efficiency and quality.
机译:随着面向服务的计算(SOC)和云计算的发展,Web服务已成为IT资源交付的重要载体。如今,许多服务可以提供相同的功能,用户很难找到他们想要的服务。因此,有必要设计可行的推荐策略,为用户提供期望的服务。大多数现有方法尝试根据对等级或服务质量(QoS)值的准确预测来推荐服务。但是,由于Internet是动态的,并且用户评级通常是主观的,因此几乎不可能准确预测QoS或评级。此外,准确的预测通常很耗时。本文提出了一种基于支持向量机(SVM)的协同过滤(CF)服务推荐方法,即SVMCF4SR。对于用户而言,SVM可以从历史评级数据中获取一个单独的超平面,从而可以过滤出用户可能不喜欢的服务。此外,可以利用代表服务的点与分离超平面之间的距离直接测量用户的偏好程度。因此,根据偏好程度,可以推荐前N个服务,而无需预测等级或QoS。理论和实验均表明,SVMCF4SR具有较高的推荐效率和质量。

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