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Effective User Preference Clustering in Web Service Applications

机译:Web服务应用程序中的有效用户偏好群集

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摘要

The research on personalized recommendation of Web services plays an important role in the field of Web services technology applications. Fortunately, not all users have completely different service preferences. Due to the same application scenarios and personal interests, some users have the same preferences for certain types of Web services. This paper explores the problem of user clustering in the service environment, grouping users according to their service preferences. It helps service providers to identify and characterize the preferences of similar users and provide them with customized services. We propose two combination-based clustering algorithms which make full use of the advantages of the K-means algorithm and the affinity propagation algorithm. In addition, a three-stage clustering process is elaborated to improve the accuracy of user clustering. To reduce the time complexity of the algorithms, we create a parallel execution model of the algorithms implemented by a higher-order MapReduce sequence linking technology. Extensive experiments on simulated datasets and real datasets are performed on the comparisons between the proposed algorithms and the other combination-based clustering algorithms. The experimental results substantiate that the proposed algorithms can effectively distinguish user group with different preferences.
机译:关于Web服务的个性化推荐研究在Web服务技术应用领域中发挥着重要作用。幸运的是,并非所有用户都具有完全不同的服务偏好。由于应用方案和个人兴趣相同,某些用户对某些类型的Web服务具有相同的偏好。本文探讨了服务环境中用户群集的问题,根据其服务首选项进行分组用户。它帮助服务提供商来识别和表征类似用户的偏好,并为它们提供定制的服务。我们提出了两个基于组合的聚类算法,可以充分利用K-Means算法和亲和力传播算法的优点。此外,详细说明了三阶段聚类过程以提高用户聚类的准确性。为了减少算法的时间复杂性,我们创建由高阶MapReduce序列链接技术实现的算法的并行执行模型。对模拟数据集和实际数据集的广泛实验是对所提出的算法和基于组合的聚类算法之间的比较来执行的。实验结果证实,所提出的算法可以有效地区分用户组具有不同的偏好。

著录项

  • 来源
    《The Computer journal》 |2020年第11期|1633-1643|共11页
  • 作者单位

    Inner Mongolia Engineering Lab of Cloud Computing and College of Computer Science Inner Mongolia University No. 235 Daxue West Street Saihan district Hohhot 010021 China;

    Inner Mongolia Engineering Lab of Cloud Computing and College of Computer Science Inner Mongolia University No. 235 Daxue West Street Saihan district Hohhot 010021 China;

    Inner Mongolia Engineering Lab of Cloud Computing and College of Computer Science Inner Mongolia University No. 235 Daxue West Street Saihan district Hohhot 010021 China;

    Department of Electrical and Computer Engineering Portland State University 1900 SW Fourth Ave. Suite 160 Portland OR 97207 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    clustering algorithm; combination; user preference; Affinity propagation; K-means;

    机译:聚类算法;组合;用户偏好;繁殖;k均值;

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