APPLICATION OF HETEROGENEOUS ENSEMBLES IN PROBLEMS OF COMPUTER SYSTEM STATE IDENTIFICATION

Oleksii Hornostal, S. Gavrylenko
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Abstract

The object of the study is the process of identifying anomalies in the operation of a computer system (CS). The subject of the study is ensemble methods for identifying the state of the CS. The goal of the study is to improve the performance of ensemble classifiers based on heterogeneous models. Methods used: machine learning methods, homogeneous and heterogeneous ensemble classifiers, Pasting and Bootstrapping technologies. Results obtained: a comparative analysis of the use of homogeneous and heterogeneous bagging ensembles in data classification problems was carried out. The effectiveness of various approaches to the selection of base ensemble classifiers has been studied. A method for identifying the state of a computer system, based on the heterogeneous bagging ensemble was proposed. Experimental studies made it possible to confirm the main theoretical assumptions, as well as evaluate the efficiency of the constructed heterogeneous ensembles. Conclusions. Based on the results of the study, the method for constructing a heterogeneous bagging ensemble classifier, which differs from known methods in the procedure for selecting base models was proposed. It made possible to increase the classification accuracy. Further development of this research could include the creating and integration of dissimilarity metrics as well as other quantitative metrics for a more accurate and balanced base model selection procedure, which would further improve the performance of the computer system state classifier.
异质集合在计算机系统状态识别问题中的应用
本研究的对象是识别计算机系统(CS)运行异常的过程。研究的主题是识别CS状态的集成方法。该研究的目的是提高基于异构模型的集成分类器的性能。使用的方法:机器学习方法,同质和异构集成分类器,粘贴和引导技术。获得的结果:在数据分类问题中使用同质和异质套袋集成进行了比较分析。研究了各种选择基集合分类器的方法的有效性。提出了一种基于异构套袋集成的计算机系统状态识别方法。实验研究证实了主要的理论假设,并评估了构建的异质系综的效率。结论。在研究结果的基础上,提出了一种构建异构套袋集成分类器的方法,该方法在选择基本模型的过程中与现有方法有所不同。这使得提高分类精度成为可能。本研究的进一步发展可以包括创建和集成不相似度量以及其他定量度量,以实现更准确和平衡的基础模型选择过程,这将进一步提高计算机系统状态分类器的性能。
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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