Intrusion classification using ECLAT and Fuzzy Logic

P. AsifAhamad, S. Jeevaraj
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引用次数: 0

Abstract

In today's world with the increase in internet usage, every digital gadget is getting connected to the internet. Due to the open connectivity of the internet, devices connected to the internet are exposed to the disturbances caused by masqueraders, misfeasors, malware writers, and intruders. Researchers are in the continuous search of methods to detect the attacks in the network and to introduce these methods to the low computation capability devices. In this work, it aimed at creating a disruption sensing system for identifying the disturbances caused by intruders. It will be achieved by choosing the best traffic capturing component. Then, by introducing/improving the association rule mining algorithm to identify the patterns in the data and to generate better rules. Then, by using the proposed method based on fuzzy logic and inference system to help in identifying the attack.
基于ECLAT和模糊逻辑的入侵分类
在当今世界,随着互联网使用的增加,每一个数字小工具都连接到互联网上。由于互联网的开放连接,连接到互联网的设备暴露在伪装者、不法行为者、恶意软件编写者和入侵者造成的干扰之下。研究人员一直在不断寻找检测网络攻击的方法,并将这些方法引入到低计算能力的设备中。在这项工作中,它旨在创建一个中断传感系统,用于识别入侵者造成的干扰。这将通过选择最佳的流量捕获组件来实现。然后,通过引入/改进关联规则挖掘算法来识别数据中的模式并生成更好的规则。然后,利用所提出的基于模糊逻辑和推理系统的方法来帮助识别攻击。
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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