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Improved SVM Method Applied to the Online User Behavior Analysis

机译:改进的SVM方法在在线用户行为分析中的应用

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Online user behavior analysis has gained extensive attention in recent years. In this paper, to obtain the real users' online behaviors based on a DNS-level tracing approach, a new improved SVM (support vector machine) method for analyzing the users' online behaviors is put forth, which enables to get insightful views at a large scale. As the increase of the amount of data, improving the convergence speed of SVM is highly desired. The computational efficiency of the proposed SVM of this work is greatly improved by rewriting KKT conditions for the Sequential Minimal Optimization (SMO) algorithm. The improved SVM possesses a great capability of clustering the users' data and revealing the users' behaviors accurately from various aspects. The effectiveness of the improved SVM method is validated and demonstrated via analyzing a set of data of users' online behaviors.
机译:近年来,在线用户行为分析已引起广泛关注。为了获得基于DNS级别跟踪方法的真实用户的在线行为,提出了一种新的改进的SVM(支持向量机)方法,用于分析用户的在线行为,从而可以在网络上获得有洞察力的观点。规模大。随着数据量的增加,非常需要提高SVM的收敛速度。通过为顺序最小优化(SMO)算法重写KKT条件,大大提高了这项工作提出的SVM的计算效率。改进的支持向量机具有强大的聚类能力,可以从各个方面对用户数据进行聚类并准确揭示用户的行为。通过分析一组用户在线行为数据,验证并证明了改进的SVM方法的有效性。

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