使用多种特征对互联网服务质量进行排名:一种机器学习方法

Dandan Tu, Chengchun Shu, Jingwei Shi, Tao Zhu, Shuang Wang, Haiyan Yu
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引用次数: 0

摘要

本文通过采用使用多个服务特征的机器学习方法来解决互联网服务质量排名问题。排名有助于为使用服务作为构建块的应用程序找到好的服务。与其他排名问题不同,互联网服务质量的好坏取决于多个关键特征。不同服务类别的关键特征各不相同,具有不平等的歧视性。本文将排序问题分为四个子任务:根据服务功能对服务进行分类、识别决定质量的关键特征、对特征度量值进行去噪和计算多个关键特征的全局排序分数,并将其转化为机器学习问题,分别使用分类、特征选择、聚类和回归技术进行求解。特别地,我们提出了一种高效的基于密集块的主观特征去噪方法,以及一种基于支持向量回归的全局排序分数计算方法。在综合数据和真实数据上的实验结果表明,该方法可以定量识别服务类别的关键特征,以10倍的速度丢弃噪声测量值,并对线性和非线性排序函数使用均方误差较小的多个特征计算全局排序分数。
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Rank Internet Service Quality Using Multiple Features: A Machine Learning Approach
This paper addresses the problem of Ranking Internet service quality by taking a machine learning approach using multiple service features. Ranking helps find good services for applications that use services as building blocks. Unlike other ranking problems, the goodness of Internet service qualities is dependent upon multiple key features. The key features vary across different service categories and have unequally discriminative natures. This paper divides the ranking problem into four subtasks including categorizing services according to the service functionalities, identifying key features that determine the quality, denoising for feature measurement values and computing global ranking scores with multiple key features, which are cast into machine learning problems and solved using techniques classification, feature selection, clustering, and regression respectively. In particular, we propose in this paper an efficient dense-block based denoising method for subjective features, and a Supported Vector Regression based method for computing global ranking scores. Experimental results on both synthetic and real data show that the proposed approach can quantitatively identify the key features across service categories, discard noisy measurement values in 10 times faster, and compute the global ranking scores using multiple features with low mean squared errors for both linear and nonlinear ranking functions.
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