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Improving Extreme Learning Machine Accuracy Utilizing Genetic Algorithm for Intrusion Detection Purposes

机译:利用遗传算法来提高遗传检测目的的极端学习机精度

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Intrusion detection system (IDS) is a kind of software protection which is developed in order to automatically provide alarms to the supervisor when someone or something tries penetrating the system information by means of malignant activity or by means of security strategy infringements. The extreme learning machine (ELM) is an easy knowledge algorithm for hidden single-layer neural networks SLFNs whose knowledge velocity can be thousands of times quicker than the traditional feeding network learning algorithms such as reverse propagation algorithm (BP) while getting best popularization execution, but the main ELM problem is not more accurate. Genetic algorithms (GAs) have become common as a way in order to provide solutions to the hard combinatorial optimization problems. In this paper, the genetic algorithm will be utilized in order to enhance the ELM accuracy for the IDS purposes. The proposed enhancement is by working and preparing the inputs of the ELM before the processing, and then, the ELM result will be utilized to determine the intrusion.
机译:入侵检测系统(IDS)是一种软件保护,该软件保护是为了当某人或某事物通过恶性活动或通过安全策略侵权来防止系统信息时自动向主管提供警报。极端学习机(ELM)是一种简单的知识算法,用于隐藏的单层神经网络SLFN,其知识速度可以比传统的馈送网络学习算法(如逆转传播算法(BP))更快地乘以数千次,同时获得最佳普及执行,但主要的榆树问题并不准确。遗传算法(气体)已成为一种常见的方式,以便为硬组合优化问题提供解决方案。在本文中,将利用遗传算法以增强IDS目的的ELM精度。所提升的增强是通过在处理前工作和准备ELM的输入,然后,将利用ELM结果来确定入侵。

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