Research of Methods of Identifying the Computer Systems State based on Bagging Classifiers

S. Gavrylenko, Oleksii Hornostal, V. Chelak
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引用次数: 1

Abstract

Peculiarities of constructing ensemble bagging classifiers for identifying the state of a computer system under conditions of noisy data are studied. Decision trees and multilayer perceptron were used as basic classifiers. It was found that the accuracy of the bagging algorithm with decision trees as basic classifiers with standard settings ranges from 84.4% to 88.7%. The use of Bootstrap algorithms for the formation of data samples: Pasting, Bootstrapping, Random Subspace, Random Patches Ensemble and the selection of the number of basic classifiers in the ensemble made it possible to increase the classification accuracy to 90.2%. The following parameters were added to improve the accuracy of bagging classifiers based on the multilayer perceptron: the algorithm for forming data samples, the number of basic classifiers in the ensemble, the function of optimizing the neural network, the function of activating hidden layer, size of hidden layers. The recommendation was made to choose the value of the analyzed parameters for the creation of bagging ensembles with multilayer perceptrons, which made it possible to increase the accuracy of computer system identification up to 92.2%. The obtained results have further practical significance and can be used in improving the methods of identifying the state of computer systems.
基于Bagging分类器的计算机系统状态识别方法研究
研究了在噪声数据条件下,构造用于识别计算机系统状态的集成bagging分类器的特点。采用决策树和多层感知器作为基本分类器。结果表明,以决策树为基本分类器的bagging算法在标准设置下的准确率为84.4% ~ 88.7%。使用Bootstrap算法形成数据样本:paste、Bootstrapping、Random Subspace、Random Patches Ensemble以及集合中基本分类器数量的选择,使分类准确率提高到90.2%。为了提高基于多层感知器的bagging分类器的准确率,我们增加了以下参数:数据样本的形成算法、集合中基本分类器的个数、优化神经网络的功能、激活隐藏层的功能、隐藏层的大小。建议选择分析参数的值来创建多层感知器的装袋集合,这使得计算机系统识别的准确率可以提高到92.2%。所得结果具有进一步的实际意义,可用于改进计算机系统状态识别方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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