Fileprints: identifying file types by n-gram analysis

Wei-Jen Li, Ke Wang, Salvatore J. Stolfo, Benjamin Herzog, Wei-Jen Kewang, Sal
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引用次数: 59

Abstract

We propose a method to analyze files to categorize their type using efficient 1-gram analysis of their binary contents. Our aim is to be able to accurately identify the true type of an arbitrary file using statistical analysis of their binary contents without parsing. Consequently, we may determine the type of a file if its name does not announce its true type. The method represents each file type by a compact representation we call a fileprint, effectively a simple means of representing all members of the same file type by a set of statistical 1-gram models. The method is designed to be highly efficient so that files can be inspected with little or no buffering, and on a network appliance operating in high bandwidth environment or when streaming the file from or to disk.
Fileprints:通过n-gram分析识别文件类型
我们提出了一种方法来分析文件,以分类他们的类型使用有效的1克分析他们的二进制内容。我们的目标是能够通过对任意文件的二进制内容进行统计分析,而不进行解析,从而准确地识别任意文件的真实类型。因此,如果文件名没有声明文件的真实类型,我们就可以确定文件的类型。该方法通过我们称为文件打印的紧凑表示来表示每种文件类型,这实际上是一种简单的方法,通过一组1-gram统计模型来表示相同文件类型的所有成员。该方法设计得非常高效,因此可以在很少或没有缓冲的情况下检查文件,并且可以在高带宽环境中运行的网络设备上或在将文件从磁盘传入或传入磁盘时检查文件。
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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