使用深度学习表征互联网主机群体:一种通用的轻量级数值嵌入

Armin Sarabi, M. Liu
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引用次数: 18

摘要

在本文中,我们提出了一个框架,使用深度学习来表征互联网主机,使用互联网扫描数据来生成主机的数字和轻量级(低维)表示。为此,我们首先开发了一种从结构化文本(扫描数据的格式)中提取二进制标记的新方法。然后,我们使用变分自编码器,一种无监督的神经网络模型,来构建高维二进制表示的低维嵌入。我们表明,这些轻量级嵌入保留了我们二进制表示中的大部分信息,同时大大减少了大规模分析的内存和计算需求。这些嵌入也是通用的,因为用于生成它们的过程是无监督的,不依赖于特定的应用程序。这种通用性使得嵌入广泛适用于各种学习任务,因此它们可以用作输入特征。我们提出了两个这样的例子,(1)检测和预测恶意主机,(2)揭开隐藏的主机属性,并比较训练模型的性能、速度、鲁棒性和可解释性。我们表明,我们的嵌入可以达到这些学习任务的高精度(>95%),同时足够快,可以大规模地进行主机级分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing the Internet Host Population Using Deep Learning: A Universal and Lightweight Numerical Embedding
In this paper, we present a framework to characterize Internet hosts using deep learning, using Internet scan data to produce numerical and lightweight (low-dimensional) representations of hosts. To do so we first develop a novel method for extracting binary tags from structured texts, the format of the scan data. We then use a variational autoencoder, an unsupervised neural network model, to construct low-dimensional embeddings of our high-dimensional binary representations. We show that these lightweight embeddings retain most of the information in our binary representations, while drastically reducing memory and computational requirements for large-scale analysis. These embeddings are also universal, in that the process used to generate them is unsupervised and does not rely on specific applications. This universality makes the embeddings broadly applicable to a variety of learning tasks whereby they can be used as input features. We present two such examples, (1) detecting and predicting malicious hosts, and (2) unmasking hidden host attributes, and compare the trained models in their performance, speed, robustness, and interpretability. We show that our embeddings can achieve high accuracy (>95%) for these learning tasks, while being fast enough to enable host-level analysis at scale.
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