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A Model for Generating Synthetic Network Flows and Accuracy Index for Evaluation of Anomaly Network Intrusion Detection Systems

机译:用于评估网络异常入侵检测系统的合成网络流量和准确度指标的模型

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Objectives: This study proposes a model for generating synthetic network flows inserting malicious fragments randomly and a new metric for measuring the performance of an Anomaly Network Intrusion Detection System (ANIDS). Method: A simulation model is developed for generating synthetic network flows inserting malicious fragments that reflect Denial of Service (DoS) and Probe attacks. An ANIDS shall maximize true positives and true negatives which is equivalent to minimizing Type-I and Type-II errors. The geometric mean of True Positive Rate (TPR) and True Negative Rate (TNR) is proposed as a metric, namely, Geometric Mean Accuracy Index (GMAI) for measuring the performance of any proposed ANIDS. Findings: The task of detecting anomalous network flows by inspecting at fragment level boils down to discrete binary classification problem. The Receiver Operating Characteristic (ROC) curve considers False Positive Rates (FPR) and True Positive Rate (TPR) only. It does not reflect the minimization of Type-I and Type-II errors. Maximizing GMAI is the reflection of minimizing 1-GMAI which is equivalent to minimizing Type-I and Type-II errors. Further, the GMAI can be employed as service level for evaluating acceptance sampling based ANIDS. The domain of DoS and Probe attacks, mostly employed by the intruders at fragment level is studied. A conceptual simulation model is developed for generating synthetic network flows incorporating malicious fragments randomly from the domain of DoS and Probe attacks. The conceptual model is translated into operational model (a set computer programs) and synthetic network flows are generated. Using the operational model, the 1000 synthetic network flows are generated for each percentage of anomalous flows varying from 0.1 to 0.9 and employing discrete uniform probability distribution for selecting a fragment for transforming it into malicious. The generated network flows for each percentage of anomalous flows are represented graphically as histogram. It is found that they follow discrete uniform distribution. Hence, the model is validated. Applications: The simulation model can be used for generating synthetic networks flows for evaluating ANIDS. The GMAI can be used as service level for evaluating a discrete binary classifier irrespective of domain.
机译:目标:这项研究提出了一个用于生成随机插入恶意片段的合成网络流的模型,以及一种用于测量异常网络入侵检测系统(ANIDS)性能的新指标。方法:开发了一个仿真模型,用于生成合成网络流,该网络将插入反映拒绝服务(DoS)和探测攻击的恶意片段。 ANIDS应最大化正值和负值,这等效于最小化I型和II型错误。提出了真实正比率(TPR)和真实负比率(TNR)的几何平均值作为度量,即用于测量任何拟议ANIDS性能的几何平均准确度指数(GMAI)。结果:通过在片段级别进行检查来检测异常网络流量的任务归结为离散的二进制分类问题。接收器工作特性(ROC)曲线仅考虑误报率(FPR)和真正率(TPR)。它不能反映出类型I和类型II错误的最小化。最大化GMAI是最小化1-GMAI的反映,等效于最小化Type-I和Type-II错误。此外,GMAI可以用作评估基于接受抽样的ANIDS的服务级别。研究了DoS和Probe攻击的域,这些域主要由入侵者在片段级别使用。开发了一种概念仿真模型,用于生成综合网络流,其中包含来自DoS和Probe攻击域的随机恶意片段。将概念模型转换为操作模型(一组计算机程序),并生成综合网络流。使用该操作模型,针对从0.1到0.9变化的每个异常流百分比,生成1000个合成网络流,并采用离散的均匀概率分布来选择片段,以将其转换为恶意片段。对于每个百分比的异常流量,生成的网络流量以图形表示为直方图。发现它们遵循离散的均匀分布。因此,模型得到验证。应用:仿真模型可用于生成用于评估ANIDS的合成网络流。 GMAI可用作服务级别,用于评估离散二进制分类器,而与域无关。

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