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Exploring the Effectiveness of True Abnormal Data Elimination in Context-Aware Web Services Recommendation

机译:探讨真实异常数据消除的有效性,在上下文中的Web服务推荐中

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Recent years have witnessed a growing interest in context-aware recommender system (CARS), which explores the impact of context factors on personalized Web services recommendation. Basically, the general idea of CARS methods is to mine historical service invocation records through the process of context-aware similarity computation. It is observed that traditional similarity mining process would very likely generate relatively big deviations of QoS values, due to the dynamic change of contexts. As a consequence, including a considerable amount of deviated QoS values in the similarity calculation would probably result in a poor accuracy for predicting unknown QoS values. In allusion to this problem, this paper first distinguishes two definitions of Abnormal Data and True Abnormal Data, the latter of which should be eliminated. Second, we propose a novel CASR-TADE method by incorporating the effectiveness of True Abnormal Data Elimination into context-aware Web services recommendation. Finally, the experimental evaluations on a real-world Web services dataset show that the proposed CASR-TADE method significantly outperforms other existing approaches.
机译:近年来目睹了对环境感知的推荐系统(汽车)的兴趣日益增长,探讨了上下文因素对个性化Web服务的影响。基本上,汽车方法的一般思想是通过上下文感知的相似性计算过程挖掘历史服务调用记录。观察到,由于上下文的动态变化,传统的相似性挖掘过程非常可能产生QoS值的相对较大的偏差。因此,在相似性计算中包括相当大量的偏差QoS值可能导致预测未知QoS值的差的准确性。在暗示这个问题的情况下,本文首先区分异常数据和真实异常数据的两个定义,应该消除后者。其次,我们通过将真实异常数据消除的有效性纳入上下文知识的Web服务推荐来提出一种新的Casr-Tade方法。最后,对现实世界网络服务数据集的实验评估表明,所提出的Casr-TADE方法显着优于其他现有方法。

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