使用模型树来描述计算机资源的使用情况

S. Heisig, Steve Moyle
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引用次数: 6

摘要

连续数值预测技术被称为模型树,它建立决策树,然后在终端节点上使用线性回归来表征计算机系统中的资源消耗。与时间序列和其他传统统计模型相比,模型树的一个优点是能够向模型添加背景知识。模型的构建使用来自几家银行的生产数据,并与这些机构的领域专家合作。给出了加入背景专家知识对模型进行改进的实例。本文还提供了一个使用模型预测来允许操作系统的自适应元素在内存使用方面变得更加自我管理的示例。与其他预测技术进行了比较,并讨论了在操作系统中使用该技术的优点和缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using model trees to characterize computer resource usage
Continuous numeric prediction techniques known as model trees which build decision trees and then use linear regression at the terminal nodes are used to characterize resource consumption in a computer system. An advantage of model trees over time series and other traditional statistical models is the ability to add background knowledge to the model. Models are built using production data from several banks in collaboration with domain experts at those institutions. A demonstration of improving the models by adding background expert knowledge is given. An example of using model predictions to allow adaptive elements of an operating system to become more self-managing with respect to memory usage is also presented. Comparisons with other predictive techniques are made and advantages and disadvantages of using this technique in the operating system are discussed.
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