基于随机森林机器学习算法的恶意软件分类评估与实现

Saifaldeen Alabadee, Karam Thanon
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引用次数: 1

摘要

恶意软件分类是信息安全领域最重要的问题之一,因为这些恶意软件数量庞大。因此,人们提出了更多的分类方法。随机森林(Random forest, RF)是目前研究较多的特征提取方法之一。由于其结果准确,被认为是一种有效的恶意软件分类方法。本文提出了基于机器学习的射频分类器来评估随机森林实现的性能。射频分类器作为检测器表现出较高的性能。它具有将大量特征与不重要的特征进行分类的良好能力。通过减少数据集中训练特征的数量,提高了训练精度和分类精度。射频分类器的准确率达到95.3%。
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Evaluation and Implementation of Malware Classification Using Random Forest Machine Learning Algorithm
Malware classification is one of the most important issues in Information security, because of the huge new numbers of these malwares. Therefore, more classification methods have been proposed. Random forest (RF) is one of the extremely method in many studies or deferent feature extraction methods. It has been considered as one of the efficient methods of malware classification due to it is accurate results. In this paper, machine learning based RF classifier had been proposed to evaluate the performance of the Random Forest implementation. The RF classifier showed high performance as a detector. It has a good capability of classifying huge number of features with unimportant features. Both training and classifying accuracy have increased by reduction of the number of training feature in dataset. The RF classifier have achieved 95.3% of accuracy.
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