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Network Anomaly Classification by Support Vector Classifiers Ensemble and Non-linear Projection Techniques

机译:支持向量分类器集成和非线性投影技术的网络异常分类

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Network anomaly detection is currently a challenge due to the number of different attacks and the number of potential attackers. Intrusion detection systems aim to detect misuses or network anomalies in order to block ports or connections, whereas firewalls act according to a predefined set of rules. However, detecting the specific anomaly provides valuable information about the attacker that may be used to further protect the system, or to react accordingly. This way, detecting network intrusions is a current challenge due to growth of the Internet and the number of potential intruders. In this paper we present an intrusion detection technique using an ensemble of support vector classifiers and dimensionality reduction techniques to generate a set of discriminant features. The results obtained using the NSL-KDD dataset outperforms previously obtained classification rates.
机译:由于各种攻击的数量和潜在攻击者的数量,网络异常检测当前是一个挑战。入侵检测系统旨在检测滥用或网络异常,以阻止端口或连接,而防火墙则根据一组预定义的规则进行操作。但是,检测到特定异常会提供有关攻击者的有价值的信息,这些信息可用于进一步保护系统或做出相应的反应。这样,由于Internet的增长和潜在入侵者的数量,检测网络入侵是当前的挑战。在本文中,我们提出了一种使用支持​​向量分类器和降维技术的集成来生成一组判别特征的入侵检测技术。使用NSL-KDD数据集获得的结果优于以前获得的分类率。

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