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Social-Spider Optimization-based Support Vector Machines applied for energy theft detection

机译:基于社会蜘蛛优化的支持向量机在能量盗窃中的应用

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The problem of Support Vector Machines (SVM) tuning parameters (i.e., model selection) has been paramount in the last years, mainly because of the high computational burden for SVM training step. In this paper, we address this problem by introducing a recently developed evolutionary-based algorithm called Social-Spider Optimization (SSO), as well as we introduce SSO for feature selection purposes. The model selection task has been handled in three distinct scenarios: (i) feature selection, (ii) tuning parameters and (iii) feature selection+tuning parameters. Such extensive set of experiments against with some state-of-the-art evolutionary optimization techniques (i.e., Particle Swarm Optimization and Novel Global-best Harmony Search) demonstrated SSO is a suitable approach for SVM model selection, since it obtained the top results in 8 out 10 datasets employed in this work (considering all three scenarios). Notice the best scenario seemed to be the combination of both feature selection and SVM tuning parameters. In addition, we validated the proposed approach in the context of theft detection in power distribution systems. (C) 2015 Elsevier Ltd. All rights reserved.
机译:近年来,支持向量机(SVM)调整参数(即模型选择)的问题最为重要,这主要是因为SVM训练步骤的计算负担很大。在本文中,我们通过引入最近开发的基于进化的算法(称为Social-Spider Optimization(SSO))来解决此问题,并且出于功能选择的目的引入SSO。模型选择任务已在三种不同的情况下处理:(i)特征选择,(ii)调整参数和(iii)特征选择+调整参数。如此广泛的实验集与一些最新的进化优化技术(例如,粒子群优化和新颖的全球最佳和声搜索)相抗,证明了SSO是选择SVM模型的合适方法,因为它在SVM中获得了最佳结果。在这项工作中使用的10个数据集中有8个(考虑了所有三种情况)。请注意,最佳方案似乎是功能选择和SVM调整参数的组合。此外,我们在配电系统中的盗窃检测中验证了所提出的方法。 (C)2015 Elsevier Ltd.保留所有权利。

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