基于特征提取和多维隐马尔可夫模型分析的动态入侵检测系统

Chang-Lung Tsai, Allen Y. Chang, Chun-Jung Chen, Wen-Jieh Yu, Ling-Hong Chen
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引用次数: 3

摘要

本文提出了一种基于多样性时间因子的入侵检测系统,结合动态自适应和静态自适应的特点,利用多维隐马尔可夫模型进行多阶段嗅探和分析。在该机制中,开发了检测、专家和控制台模块。其中,检测模块在网络的每个节点/设备上部署了多个独立的传感器。该模块不仅负责在每个不同的时间段和阶段检测和收集所有需要的信息,而且还表示具体的权重函数,以表示可能影响的重要程度,并根据每个收集到的数据上安全事件发生的频率和次数来调整值。所有收集到的审计数据和检测到的正常/异常信号将被传输到专家模块的数据库中,对这些多个观察因素进行进一步的综合评价,并采用基于多维隐马尔可夫模型算法的综合信息和关联事件分析进行处理。然后,将模糊推理规则应用于入侵识别和识别。控制台模块负责管理系统的性能,控制所有监测安全事件的传感器,并生成警报,定期提供报告和建议,以便采取适当的响应和做出最佳决策。实验结果表明,所提出的入侵检测机制具有良好的效率和性能。
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Dynamic intrusion detection system based on feature extraction and multidimensional hidden Markov model analysis
In this paper, a novel intrusion detection system based on diversity timing factor, combining the characteristic of dynamic and static adaption, sniffing from multi-stage and analyzing with multi-dimensional hidden Markov model has been proposed. In the proposed mechanism, detection, expert, and console modules are developed. In which, the detection module is deployed with numbers of independent sensors on each node/device of the network. This module not only takes the responsibility to detect and collect all of the desired information on each different timing period and stage, but also denotes specific weighting function to indicate the significance of possible influence and tune the value according to the frequency and times of the occurrence of security events on each collected data. All of the collected audit data and detected normal/abnormal signals will be transferred to the database of the expert module for further integrated evaluation on those multiple observing factors and processed with synthetic information and associative events analysis based on hidden Markov model algorithm on multidimensional. After then, the fuzzy inferring rule is applied for intrusion recognition and identification. The console module is assigned to manage the performance of the system, control all of the sensors for monitoring security events and generate alerts and offer periodically reports and present proposals for taking suitable response and making optimal decision. Experimental results demonstrate that the proposed IDS mechanism possesses good efficiency and performance.
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