云服务器利用中基于前馈神经网络不变滑动窗口特征选择的无用服务利用率

Savinderjit Kaur
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引用次数: 0

摘要

云负载平衡是在云计算中划分负载和计算财产的过程。企业可以通过在大量的计算机、网络或服务器上分配资源来管理分配压力或请求压力,主要是云中的流量是服务利用中的一个大问题方法。携带时间因素对提高服务质量没有决定性作用。云负载平衡包括保持工作负载流量和请求分布在互联网上。这通过使用不变滑动窗口特征选择(IVSWFS)减少了不相关的方差特征。采用前馈改进支持向量机(FFSVM)算法对选取的特征差进行蜘蛛优化训练。这预测交通流量的类别,方差水平以及分类的精度,召回率与其他系统相比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Unwanted Service Utilization Based On Invariant Slide Window Feature Selection Using Feed Forward Nueral Network in Cloud Server Utilization
Cloud load balancing is distinct as a process of dividing loads and computing possessions in cloud computing. Businesses can manage assignment strains or request stresses by distributing resources across a large number of computers, networks or servers, mainly the traffic in cloud is a big problem approach in service utilization. Carrying the time factor is nondeterminant to improve the quality of the service. Cloud load balancing involves keeping workload traffic and requests distributed across the Internet. This reduces the non-related variance features by using Invariant Slide Window Feature Selection (IVSWFS). The selected features difference be trained with spider optimization using feed forward modified Support vector machine (FFSVM) algorithm. This predicts the traffic flow by class by variance level as well classification in precision, recall rate compared to other system.
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