Recurrent Neural Networks Based Approach for Intrusion Detection System

Arjita Shrivastava, Yogadhar Pandey
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Abstract

The aimaof this analysis is the creation and associate build up the system to forestall an organism against each well-known a and a new attacks, and functions as an adaptive distribute defense system or adaptive artificial system. Artificial Immune Systems abstract the structure of immune systems to include memory, fault detection and adaptive learning. Wea tend to propose associate system primarily based real time intrusion detection system exploitation supervised learning algorithmic rule. This paper used KDD-99 as a test data set and perform our proposed methodology NABa (Numentaa Anomaly Benchmark) algorithm. This algorithm basically consists of two operation, training phase and testinga or detectionaphase respectively. Our proposed methodology can be perform on all kinds of attributes class (Large data set and Reduced data set) and show some improve results in term accuracy and better detection rate of unauthorized activities.
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基于递归神经网络的入侵检测系统
这种分析的目的是创建和建立一个系统,以防止一个有机体对每一个已知的和新的攻击,并作为一个自适应分布式防御系统或自适应人工系统的功能。人工免疫系统将免疫系统的结构抽象为记忆、故障检测和自适应学习。我们倾向于提出基于关联系统的基于监督学习算法规则的实时入侵检测系统。本文以KDD-99作为测试数据集,执行我们提出的方法NABa (Numentaa Anomaly Benchmark)算法。该算法主要分为两个操作阶段:训练阶段和测试或检测阶段。我们提出的方法可以在各种属性类(大数据集和约简数据集)上执行,并且在术语准确性和未授权活动的检测率方面有一定的提高。
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