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A Discretized Extended Feature Space (DEFS) Model to Improve the Anomaly Detection Performance in Network Intrusion Detection Systems

机译:可离散的扩展特征空间(DEFS)模型,以提高网络入侵检测系统中的异常检测性能

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The unbreakable bond that exists today between devices and network connections makes the security of the latter a crucial element for our society. For this reason, in recent decades we have witnessed an exponential growth in research efforts aimed at identifying increasingly efficient techniques able to tackle this type of problem, such as the Intrusion Detection System (IDS). If on the one hand an IDS plays a key role, since it is designed to classify the network events as normal or intrusion, on the other hand it has to face several well-known problems that reduce its effectiveness. The most important of them is the high number of false positives related to its inability to detect event patterns not occurred in the past (i.e. zero-day attacks). This paper introduces a novel Discretized Extended Feature Space (DEFS) model that presents a twofold advantage: first, through a discretization process it reduces the event patterns by grouping those similar in terms of feature values, reducing the issues related to the classification of unknown events; second, it balances such a discretization by extending the event patterns with a series of meta-information able to well characterize them. The approach has been evaluated by using a real-world dataset (NSL-KDD) and by adopting both the in-sample/out-of-sample and time series cross-validation strategies in order to avoid that the evaluation is biased by over-fitting. The experimental results show how the proposed DEFS model is able to improve the classification performance in the most challenging scenarios (unbalanced samples), with regard to the canonical state-of-the-art solutions.
机译:设备与网络连接之间存在的不可用的债券使后者的安全性成为我们社会的关键因素。因此,近几十年来,我们目睹了旨在识别能够解决这种问题的越来越有效技术的研究工作中的指数增长,例如入侵检测系统(IDS)。如果一方面,IDS播放关键作用,因为它旨在将网络事件分类为正常或入侵,另一方面它必须面临几个降低其有效性的众所周知的问题。它们中最重要的是与其无法检测过去未发生的事件模式(即零日攻击)相关的误报。本文介绍了一种新的离散化扩展特征空间(DEFS)模型,它具有双重优势:首先,通过分散过程,它通过在特征值方面分组类似的分散过程来减少事件模式,从而减少与未知事件的分类相关的问题;其次,它通过扩展具有能够很好地表征的元信息来延长事件模式来平衡这种离散化。通过使用现实世界数据集(NSL-KDD)来评估该方法,并采用样本/超出样本和时间序列交叉验证策略,以避免评估被过度偏置 - 配件。实验结果展示了所提出的DEFS模型能够在规范最新的解决方案方面可以在最具挑战性场景(不平衡样本)中提高分类性能。

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