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VoIP Traffic Modelling using Gaussian Mixture Models, Gaussian Processes and Interactive Particle Algorithms

机译:使用高斯混合模型,高斯过程和交互式粒子算法VoIP流量建模

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The paper deals with an important problem in the Voice over IP (VoIP) domain, namely being able to understand and predict the structure of traffic over some given period of time. VoIP traffic has a time variant structure, e.g. due to sudden peaks, daily or weekly moving patterns of activities, which in turn makes prediction difficult. Obtaining insights about the structure and trends of traffic has important implications when dealing with the nowadays cloud-deployed VoIP services. Prediction techniques are applied to anticipate the incoming traffic, for an efficient distribution of the traffic in the system and allocation of resources. The article looks in a critical manner at a series of machine learning techniques. We namely compare and review (using real VoIP data) the results obtained when using a Gaussian Mixture Model (GMM), Gaussian Processes (GP), and an evolutionary-like Interacting Particle Systems based (sampling) algorithm. The experiments consider different setups as to verify the time variant traffic assumption.
机译:本文对IP语音(VoIP)域中的重要问题有关,即能够理解和预测某些特定时间段内的交通结构。 VoIP流量具有时间变体结构,例如,由于突然的峰值,每日或每周移动的活动模式,这反过来又使预测变得困难。在处理当今云部署的VoIP服务时,获得对交通结构和交通趋势的洞察力。应用预测技术以预测传入流量,以便有效分发系统中的流量和资源分配。该文章在一系列机器学习技术中以批判方式看起来。我们即比较和审查(使用真实VoIP数据)使用高斯混合模型(GMM),高斯工艺(GP)和基于(采样)算法的进化相互作用粒子系统获得的结果。实验考虑不同的设置,以验证时间变量的流量假设。

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