Service Recommendation Using Customer Similarity and Service Usage Pattern

Ruilin Liu, Xiaofei Xu, Zhongjie Wang
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引用次数: 6

Abstract

With the increased number of web services advertised on the internet, it is becoming vital to resolve typical problems of service recommendation. Although service recommendation has been studied by researchers in recent years, existing methods have remarkable achievements on offering single service recommendation, not only considering functional features of web services but also non-functional features. However, the customers usually adopted composite services to satisfy complex and coarse-grained requirements. The traditional service recommendation does not have much concern about composite services. Through a long period of usage, the dependencies among composite services are hidden in historical usage records. In reality, these dependencies have great influence on the quality of service recommendation. To improve the effectiveness of service recommendation, this paper proposes a novel service recommendation approach based on service usage patterns. Firstly, the similar customer group of target customer is identified through the personal attribute based clustering and similarity of rating preference, Secondly, service usage patterns of the similar customer group are mined based on the variant of Generalized Sequential Patterns (GSP) algorithm, Thirdly, promising services are recommended for the target customer according to the matching degree between previously used services and service usage patterns, Finally, experimental results verify the efficiency and effectiveness of our approach.
使用客户相似度和服务使用模式进行服务推荐
随着互联网上web服务广告数量的增加,解决典型的服务推荐问题变得至关重要。虽然近年来有研究者对服务推荐进行了研究,但现有的方法在提供单一的服务推荐方面取得了显著的成就,不仅考虑了web服务的功能特征,而且还考虑了非功能特征。然而,客户通常采用组合服务来满足复杂和粗粒度的需求。传统的服务建议不太关注组合服务。通过长时间的使用,组合服务之间的依赖关系隐藏在历史使用记录中。实际上,这些依赖关系对服务推荐的质量有很大的影响。为了提高服务推荐的有效性,本文提出了一种基于服务使用模式的服务推荐方法。首先,通过基于个人属性的聚类和评级偏好相似性识别目标客户的相似客户群;其次,基于广义序列模式(GSP)算法的变体挖掘相似客户群的服务使用模式;第三,根据之前使用过的服务与服务使用模式的匹配程度,为目标客户推荐有前景的服务;实验结果验证了该方法的有效性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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