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MLTracer: Malicious Logins Detection System via Graph Neural Network

机译:MLTRACER:通过图形神经网络的恶意登录检测系统

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Malicious login, especially lateral movement, has been a primary and costly threat for enterprises. However, there exist two critical challenges in the existing methods. Specifically, they heavily rely on a limited number of predefined rules and features. When the attack patterns change, security experts must manually design new ones. Besides, they cannot explore the attributes' mutual effect specific to login operations. We propose MLTracer, a graph neural network (GNN) based system for detecting such attacks. It has two core components to tackle the previous challenges. First, MLTracer adopts a novel method to differentiate crucial attributes of login operations from the rest without experts' designated features. Second, MLTracer leverages a GNN model to detect malicious logins. The model involves a convolutional neural network (CNN) to explore attributes of login operations, and a co-attention mechanism to mutually improve the representations (vectors) of login attributes through learning their login-specific relation. We implement an evaluation of such an approach. The results demonstrate that MLTracer significantly outperforms state-of-the-art methods. Moreover, MLTracer effectively detects various attack scenarios with a remarkably low false positive rate (FPR).
机译:恶意登录,尤其是横向移动,一直是企业的主要和昂贵的威胁。然而,存在于现有方法的两个关键挑战。具体而言,它们在很大程度上依赖于预定义的规则和特点的数量有限。当攻击模式的改变,安全专家必须手动设计新的。此外,他们无法探索的属性的相互影响特定的登录操作。我们建议MLTracer,图表神经网络(GNN)基于用于检测这样的攻击系统。它有两个核心组件,以解决以前的挑战。首先,MLTracer采用以区别于其余的登录操作的关键属性,无需专家的指定特征的新方法。其次,MLTracer利用了GNN模型来检测恶意登录。该模型包括卷积神经网络(CNN)探索登录操作的属性,以及共同关心的机制,通过学习他们登录特定的关系,相互提高登录属性的表示(矢量)。我们实行这种方法的评估。结果表明,MLTracer显著优于状态的最先进的方法。此外,MLTracer有效地检测具有相当低的假阳性率(FPR)的各种攻击场景。

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