使用基于信任的奖励系统检测网络入侵

Kole Nunley, Wei Lu
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引用次数: 0

摘要

为了提高综合入侵检测能力,近年来提出了将多种入侵检测技术组合成一个混合系统。然而,这种混合系统并不总是比其组成探测器强。在构建可操作的入侵检测系统(IDS)时,如何使不同的检测技术有效地互操作已成为一个主要的挑战。为了提高混合入侵检测系统的准确性和可靠性,本文提出了一种新的奖励系统模型。特别地,在强化学习算法中建立的基于信心的奖励系统包括三个组成部分。即,一个相对折扣因子,一个置信度提取技术,和一个独特的奖励计算算法。初步的案例研究表明,所提出的奖励系统具有提高异常检测准确率、降低虚警率和提高对新网络流量适应性的潜力。
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Detecting Network Intrusions Using a Confidence-Based Reward System
Combining multiple intrusion detection technologies into a hybrid system has been recently proposed to improve the comprehensive intrusion detection capability. However, such a hybrid system is not always stronger than its component detectors. Getting different detection technologies to interoperate effectively and efficiently has become a major challenge when building operational intrusion detection systems (IDS's). In this paper, we propose a novel reward system model in order to increase the accuracy and reliability of hybrid IDS's. In particular, the proposed confidence-based reward system built within a reinforcement learning algorithm includes three components. Namely, a relative discount factor, a confidence extraction technique, and a unique reward computing algorithm. The preliminary case studies show that the proposed reward system has a potential to improve the anomaly detection accuracy, decrease false alarm rate, and improve adaptability to new network traffic.
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