Optimizing Cleanset Growth by Using Multi-Class Neural Networks

Adrian Ioan Pîrîu, M. Leonte, Nicolae Postolachi, Dragos Gavrilut
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引用次数: 2

Abstract

Starting from 2005-2006 the number of malware samples had an exponential growth to a point where at the beginning of 2018 more than 800 million samples were known. With these changes, security vendors had to adjust - one solution being using machine learning algorithms for prediction. However, as the malware number grows so should the benign sample set (if one wants to have a reliable training and a proactive model). This paper presents some key aspects related to procedures and optimizations one needs to do in order to create a large cleanset (a collection of benign files) that can be used for machine learning training.
利用多类神经网络优化Cleanset增长
从2005-2006年开始,恶意软件样本的数量呈指数级增长,到2018年初,已知样本超过8亿个。有了这些变化,安全供应商不得不做出调整——一种解决方案是使用机器学习算法进行预测。然而,随着恶意软件数量的增加,良性样本集也应该增加(如果想要获得可靠的训练和主动模型)。本文介绍了与过程和优化相关的一些关键方面,以便创建可用于机器学习训练的大型干净集(良性文件的集合)。
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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