CRApr 12, 2013

Current Studies On Intrusion Detection System, Genetic Algorithm And Fuzzy Logic

arXiv:1304.3535v155 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that discusses existing methods for improving IDS security, without presenting new experimental results.

The paper reviews intrusion detection systems (IDS) and highlights the problem of false alarms in anomaly-based detection, proposing that fuzzy logic can reduce false alarm rates.

Nowadays Intrusion Detection System (IDS) which is increasingly a key element of system security is used to identify the malicious activities in a computer system or network. There are different approaches being employed in intrusion detection systems, but unluckily each of the technique so far is not entirely ideal. The prediction process may produce false alarms in many anomaly based intrusion detection systems. With the concept of fuzzy logic, the false alarm rate in establishing intrusive activities can be reduced. A set of efficient fuzzy rules can be used to define the normal and abnormal behaviors in a computer network. Therefore some strategy is needed for best promising security to monitor the anomalous behavior in computer network. In this paper I present a few research papers regarding the foundations of intrusion detection systems, the methodologies and good fuzzy classifiers using genetic algorithm which are the focus of current development efforts and the solution of the problem of Intrusion Detection System to offer a realworld view of intrusion detection. Ultimately, a discussion of the upcoming technologies and various methodologies which promise to improve the capability of computer systems to detect intrusions is offered.

Foundations

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