Cyber attacks pose crucial threats to computer system security, and put digital treasuries at excessive risks. This leads to an urgent call for an effective intrusion detection system that can identify the intrusion attacks with high accuracy. It is challenging to classify the intrusion events due to the wide variety of attacks. Furthermore, in a normal network environment, a majority of the connections are initiated by benign behaviors. The class imbalance issue in intrusion detection forces the classifier to be biased toward the majority/benign class, thus leave many attack incidents undetected. Spurred by the success of deep neural networks in computer vision and natural language processing, in this paper, we design a new system named DeepIDEA that takes full advantage of deep learning to enable intrusion detection and classification. To achieve high detection accuracy on imbalanced data, we design a novel attack-sharing loss function that can effectively move the decision boundary towards the attack classes and eliminates the bias towards the majority/benign class. By using this loss function, DeepIDEA respects the fact that the intrusion mis-classification should receive higher penalty than the attack mis-classification. Extensive experimental results on three benchmark datasets demonstrate the high detection accuracy of DeepIDEA. In particular, compared with eight state-of-the-art approaches, DeepIDEA always provides the best class-balanced accuracy.
翻译:网络攻击对计算机系统安全构成重大威胁,并使数字国库面临过度风险。 这导致人们紧急呼吁建立一个有效的入侵探测系统,能够非常准确地识别入侵袭击。 将入侵事件分类是一项艰巨的任务, 因为袭击种类繁多。 此外, 在正常的网络环境中, 大部分连接都是由良性行为引发的。 入侵探测中的阶级不平衡问题迫使分类者偏向多数/ 基本等级, 从而使得许多袭击事件不被察觉。 本文中, 我们设计了一个名为DeepIDA的新系统, 该系统充分利用深入的学习, 以便发现和分类。 为了对不平衡的数据进行高度的探测, 我们设计了一个新的攻击共享损失功能, 从而能够有效地将决定边界移向攻击等级, 消除偏向多数/ 基本等级的偏向。 利用这一损失功能, DeepIDA 尊重这样的事实,即入侵错误分类应该受到比攻击错误分类处理更严厉的惩罚。 在三份基准数据分类中, 广泛的实验结果将充分利用深度的精确性, 提供了深度的深度的精确性, 。