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METHOD, PRODUCT, AND SYSTEM FOR DETECTING MALICIOUS NETWORK ACTIVITY USING A GRAPH MIXTURE DENSITY NEURAL NETWORK

机译:使用图形混合密度神经网络检测恶意网络活动的方法,产品和系统

摘要

Disclosed is an approach for detecting malicious network activity (e.g. based on a data hoarding activity identifies using a graph mixture density neural network (GraphMDN)). Generally, the approach includes generating embeddings using a graph convolution process and then processing the embeddings using a mixture density neural network. The approach may include collecting network activity data, generating a graph representing the network activity, or an aggregation thereof that maintains the inherent graphical nature and characteristics of the data, and training a GraphMDN in order to generate pluralities of distributions characterizing one or more aspects of the graph representing the network activity. The approach may also include capturing new network activity data, and evaluating that data using the distributions generated by the trained GraphMDN, and generation corresponding detection results.
机译:公开了一种用于检测恶意网络活动的方法(例如,基于数据囤积活动使用图形混合密度神经网络(GraphMDN)识别)。通常,该方法包括使用图形卷积过程生成嵌入,然后使用混合密度神经网络处理嵌入。该方法可以包括收集网络活动数据,生成表示网络活动的曲线图,或者其聚合,或者维护数据的固有图形性质和特征,以及训练图形,以便生成特征一个或多个方面的多个分布式表示网络活动的图表。该方法还可以包括捕获新的网络活动数据,并使用经过训练的图形DDN生成的分布评估数据,以及生成相应的检测结果。

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