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引用次数: 7
摘要
与电子商务网站等领域的产品推荐类似,web服务推荐通常利用用户和服务的历史调用信息(用QoS、Quality of service表示)来预测未知的QoS值,然后以最佳的QoS向活跃用户推荐web服务。为了适应web服务QoS值预测复杂多变的场合,本文将基于用户的协同过滤算法(UBCF)和基于项的协同过滤算法(IBCF)相结合,提出了一种web服务推荐的混合协同过滤方法。该混合方法考虑了网络中用户和服务调用信息的个性化,利用Pearson相关系数(PCC)度量两个用户或两个服务的相似性,并在向活跃用户推荐服务时自适应平衡UBCF和IBCF的权重。最后,通过[12]提供的实验数据,我们进行了一组实验,结果表明我们提出的改进混合协同过滤算法提高了推荐的准确性。
A kind of web service recommendation method based on improved hybrid collaborative filtering
Similar to product recommendation used in e-commerce sites and other fields, the recommendation of web service often take advantage of the history invocation information of users and services (denotes as QoS, Quality of service) to predict the unknown QoS value and then recommend web services to the active user with the best QoS. In order to adapt to the complex and changeful prediction occasions of QoS value of web service, this paper presents a hybrid collaborative filtering approach for the recommendation of web service by combining user-based collaborative filtering algorithm (UBCF) and item-based collaborative filtering algorithm(IBCF). This hybrid method consider the personalization of invocation information of users and services in the net while using Pearson Correlation Coefficient (PCC) to measure the similarity of two users or two services and adaptively balance the weigh of UBCF and IBCF while recommending services to the active user. Finally, though the experimental data provided by [12], we conduct a set of experiments and the results show that our proposed improved hybrid collaborative filtering algorithm had improved the accuracy of recommendation.