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From Reputation Perspective: A Hybrid Matrix Factorization for QoS Prediction in Location-Aware Mobile Service Recommendation System

机译:从信誉角度来看:位置感知移动服务推荐系统中用于QoS预测的混合矩阵分解

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摘要

With the great development of mobile services, the Quality of Services (QoS) becomes an essential factor to meet end users' personalized requirement on the nonfunctional performance of mobile services. However, most of the QoS values in real cases are unattainable because a service user would only invoke some specific mobile services. Therefore, how to predict the missing QoS values and recommend high-quality services to end users becomes a significant challenge in mobile service recommendation research. Previous QoS prediction researches demonstrate that the nonfunctional performance of mobile services is closely related to users' location information. However, most location-aware QoS prediction methods ignore the premise that the obtainable QoS values observed by different users in same location region would probably be untrustworthy, which will lead to inaccurate and unreliable prediction results. To make credible location-aware QoS prediction, we propose a hybrid matrix factorization method integrated location and reputation information (LRMF) to predict the unattainable QoS values. Our approach firstly cluster users into different locational region based on their geographical distribution, and then we compute users' reputation to identify untrustworthy users in every locational region. Finally, the unknown QoS values can be predicted by integrating locational cluster information and users' reputation into a hybrid matrix factorization model. Comprehensive experiments are conducted on a public QoS dataset which contains sufficient real-world service invocation records. The evaluation results indicate that our LRMF method can effectively reduce the impact of unreliable users on QoS prediction and make credible mobile service recommendation.
机译:随着移动服务的巨大发展,服务质量(QoS)成为满足最终用户对移动服务非功能性性能的个性化要求的重要因素。但是,由于服务用户只能调用某些特定的移动服务,因此在实际情况下,大多数QoS值是无法达到的。因此,如何预测丢失的QoS值并向终端用户推荐高质量的服务成为移动服务推荐研究中的重大挑战。先前的QoS预测研究表明,移动服务的非功能性能与用户的位置信息密切相关。但是,大多数位置感知的QoS预测方法都忽略了这样一个前提,即在同一位置区域中不同用户观察到的可获得的QoS值可能是不可信的,这将导致预测结果不准确和不可靠。为了进行可靠的位置感知QoS预测,我们提出了一种混合矩阵分解方法,该方法结合了位置和信誉信息(LRMF)来预测无法获得的QoS值。我们的方法首先根据用户的地理分布将他们分为不同的位置区域,然后我们计算用户的声誉以识别每个位置区域中的不信任用户。最后,可以通过将位置集群信息和用户声誉集成到混合矩阵分解模型中来预测未知QoS值。在包含足够的实际服务调用记录的公共QoS数据集上进行了全面的实验。评估结果表明,我们的LRMF方法可以有效减少不可靠用户对QoS预测的影响,并提出可靠的移动服务推荐。

著录项

  • 来源
    《Mobile Information Systems》 |2019年第1期|8950508.1-8950508.12|共12页
  • 作者

    Li Shun; Wen Junhao; Wang Xibin;

  • 作者单位

    Chongqing Univ Sch Big Data & Software Engn Chongqing 400044 Peoples R China;

    Guizhou Inst Technol Sch Data Sci Guiyang 550003 Guizhou Peoples R China;

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  • 正文语种 eng
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