基于混合单调分解的文件方言无监督聚类

Michael Robinson, Tate Altman, Denley Lam, Le Li
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摘要

本文提出了一种无监督分类方法,该方法根据文件的行为将一组文件划分为不重叠的方言,这些方言由一组使用它们的程序产生的消息决定。消息模式可以用作特定类型行为的签名,要理解有些消息可能同时发生,而另一些则不是。基于这些行为特征,我们提出了一个新的文件格式方言定义。方言定义了可能消息的子集,称为所需消息。一旦文件以方言及其所需的消息为条件,其余的消息在统计上是独立的。有了这个定义,我们提出了一种贪婪算法,该算法从由文件消息数据矩阵组成的数据集中推断出候选方言,演示了它在几种文件格式上的性能,并证明了它是最优的条件。我们表明,分析人员需要考虑的方言比不同的消息模式少,这减少了他们在研究复杂格式时的认知负荷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised clustering of file dialects according to monotonic decompositions of mixtures
This paper proposes an unsupervised classification method that partitions a set of files into non-overlapping dialects based upon their behaviors, determined by messages produced by a collection of programs that consume them. The pattern of messages can be used as the signature of a particular kind of behavior, with the understanding that some messages are likely to co-occur, while others are not. We propose a novel definition for a file format dialect, based upon these behavioral signatures. A dialect defines a subset of the possible messages, called the required messages. Once files are conditioned upon a dialect and its required messages, the remaining messages are statistically independent. With this definition in hand, we present a greedy algorithm that deduces candidate dialects from a dataset consisting of a matrix of file-message data, demonstrate its performance on several file formats, and prove conditions under which it is optimal. We show that an analyst needs to consider fewer dialects than distinct message patterns, which reduces their cognitive load when studying a complex format.
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