Fast Model Learning for the Detection of Malicious Digital Documents

Daniel Scofield, Craig Miles, Stephen Kuhn
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引用次数: 10

Abstract

Modern cyber attacks are often conducted by distributing digital documents that contain malware. The approach detailed herein, which consists of a classifier that uses features derived from dynamic analysis of a document viewer as it renders the document in question, is capable of classifying the disposition of digital documents with greater than 98% accuracy even when its model is trained on just small amounts of data. To keep the classification model itself small and thereby to provide scalability, we employ an entity resolution strategy that merges syntactically disparate features that are thought to be semantically equivalent but vary due to programmatic randomness. Entity resolution enables construction of a comprehensive model of benign functionality using relatively few training documents, and the model does not improve significantly with additional training data.
基于快速模型学习的恶意数字文档检测
现代网络攻击通常是通过分发包含恶意软件的数字文件来进行的。本文详细介绍的方法由一个分类器组成,该分类器在呈现所讨论的文档时使用来自文档查看器动态分析的特征,即使其模型仅在少量数据上进行训练,也能够以超过98%的准确率对数字文档的处置进行分类。为了保持分类模型本身较小,从而提供可伸缩性,我们采用了一种实体解析策略,该策略合并了语法上不同的特征,这些特征被认为在语义上是等价的,但由于编程随机性而有所不同。实体解析可以使用相对较少的训练文档构建良性功能的综合模型,并且该模型不会因额外的训练数据而得到显着改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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