单边类SVM训练方法用于恶意软件检测

George Popoiu
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引用次数: 0

摘要

尽管机器学习方法在实践中被用于恶意软件检测,但仍有许多障碍需要克服。如今,关于恶意软件检测的机器学习仍然存在一些挑战:尽可能低的误报率,快速分类,低易失性和磁盘内存使用。由于这些限制,安全解决方案通常必须依赖于更简单的模型,而不是更复杂的模型。本文通过对支持向量机优化问题的重新表述,降低了恶意软件检测环境下支持向量机模型的训练阶段误报率。结果表明,所提出的线性支持向量机模型比常规线性支持向量机模型或单侧类感知器[4]具有更低的替换率和更好的假阳性率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One side class SVM training methods for malware detection
Even though machine learning methods are being used in practice for malware detection, there are still many hurdles to overcome. Nowadays, there are still some challenges remaining regarding machine learning for malware detection: having a false positive rate as low as possible, fast classification, low volatile and disk memory usage. Because of these constraints, security solutions often have to rely on simpler models rather than on more complex ones. This paper has the purpose of reducing the training phase false positive rate of SVM models in the context of malware detection by using reformulations of the SVM optimization problem. The results obtained show that the proposed linear SVM model can be a drop in replacement with better false positive rate than regular linear SVM models or the one side class perceptron [4].
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