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An Approach Based on the Improved SVM Algorithm for Identifying Malware in Network Traffic

机译:一种基于改进SVM算法来识别网络流量恶意软件的方法

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摘要

Due to the growth and popularity of the internet, cyber security remains, and will continue, to be an important issue. There are many network traffic classification methods or malware identification approaches that have been proposed to solve this problem. However, the existing methods are not well suited to help security experts effectively solve this challenge due to their low accuracy and high false positive rate. To this end, we employ a machine learning-based classification approach to identify malware. The approach extracts features from network traffic and reduces the dimensionality of the features, which can effectively improve the accuracy of identification. Furthermore, we propose an improved SVM algorithm for classifying the network traffic dubbed Optimized Facile Support Vector Machine (OFSVM). The OFSVM algorithm solves the problem that the original SVM algorithm is not satisfactory for classification from two aspects, i.e., parameter optimization and kernel function selection. Therefore, in this paper, we present an approach for identifying malware in network traffic, called Network Traffic Malware Identification (NTMI). To evaluate the effectiveness of the NTMI approach proposed in this paper, we collect four real network traffic datasets and use a publicly available dataset CAIDA for our experiments. Evaluation results suggest that the NTMI approach can lead to higher accuracy while achieving a lower false positive rate compared with other identification methods. On average, the NTMI approach achieves an accuracy of 92.5% and a false positive rate of 5.527%.
机译:由于互联网的发展和普及,网络安全遗体,并会继续,是一个重要的问题。有许多网络流量分类方法或已提出了解决这个问题的恶意软件的识别方法。然而,现有的方法不太适合帮助安全专家有效地解决了这一难题,由于其精度低和假阳性率较高。为此,我们采用了基于机器学习的分类方法来识别恶意软件。该方法从提取的网络业务的特性和减少的特征,可有效地提高识别的精度的维数。此外,我们提出了一种改进的SVM算法被称为简易优化支持向量机(OFSVM)的网络流量进行分类。该OFSVM算法解决了原SVM算法是不分类令人满意来自两个方面,即,参数优化和核函数选择的问题。因此,在本文中,我们提出用于识别在网络流量的恶意软件的方法,被称为网络流量恶意软件识别(NTMI)。为了评估本文提出的NTMI方法的有效性,我们收集四个实的网络流量数据集,并使用可公开获得的数据集CAIDA我们的实验。评价结果表明,NTMI方法会导致更高的精度,同时与其他识别方法相比,实现了更低的假阳性率。平均来说,NTMI方法实现的92.5%的精度和5.527%的假阳性率。

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