Adjusting SVMs for Large Data Sets using Balanced Decision Trees

Cristina Vatamanu, Dragos Gavrilut, George Popoiu
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引用次数: 1

Abstract

While machine learning techniques were successfully used for malware identification, they were not without challenges. Over the years, several key points related to the usage of such algorithm for practical applications have evolved: low (close to 0) number of false positives, fast evaluation method, reasonable memory and disk footprint. Because of these constraints, security vendors had to chose a simple algorithm (that can meet all of the above requirements) instead of a more complex ones, even if the later had better detection rates. The present paper describes a hybrid approach that can be used in conjunction with an SVM classifier allowing us to overcome some of the above mentioned constraints.
基于平衡决策树的大数据集支持向量机调整
虽然机器学习技术成功地用于恶意软件识别,但它们并非没有挑战。多年来,在实际应用中使用这种算法的几个关键点已经发展:低(接近于0)误报次数、快速的评估方法、合理的内存和磁盘占用。由于这些限制,安全供应商不得不选择一种简单的算法(可以满足上述所有要求),而不是更复杂的算法,即使后者具有更好的检测率。本文描述了一种混合方法,可以与支持向量机分类器结合使用,使我们能够克服上述一些限制。
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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