Using Executable Slicing to Improve Rogue Software Detection Algorithms

Jan Durand, Juan Flores, T. Atkison, Nicholas A. Kraft, Randy K. Smith
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引用次数: 7

Abstract

This paper describes a research effort to use executable slicing as a pre-processing aid to improve the prediction performance of rogue software detection. The prediction technique used here is an information retrieval classifier known as cosine similarity that can be used to detect previously unknown, known or variances of known rogue software by applying the feature extraction technique of randomized projection. This paper provides direction in answering the question of is it possible to only use portions or subsets, known as slices, of an application to make a prediction on whether or not the software contents are rogue. This research extracts sections or slices from potentially rogue applications and uses these slices instead of the entire application to make a prediction. Results show promise when applying randomized projections to cosine similarity for the predictions, with as much as a 4% increase in prediction performance and a five-fold decrease in processing time when compared to using the entire application.
利用可执行切片改进流氓软件检测算法
本文介绍了一种使用可执行切片作为预处理辅助手段来提高恶意软件检测预测性能的研究工作。这里使用的预测技术是一种被称为余弦相似性的信息检索分类器,它可以通过应用随机投影的特征提取技术来检测已知流氓软件的未知、已知或方差。本文为回答是否可能仅使用应用程序的部分或子集(称为切片)来预测软件内容是否为恶意内容的问题提供了方向。这项研究从潜在的恶意应用程序中提取部分或片段,并使用这些片段而不是整个应用程序进行预测。当将随机预测应用于余弦相似性预测时,结果显示出希望,与使用整个应用程序相比,预测性能提高了4%,处理时间减少了五倍。
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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