A New Combined Model with Reduced Label Dependency for Malware Classification

Prishita Ray, Tanmayi Nandan, Lahari Anne, K. A. Kumar
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引用次数: 1

Abstract

With the technological advancements in recent times, security threats caused by malware are increasing with no bounds. The first step performed by security analysts for the detection and mitigation of malware is its classification. This paper aims to classify network intrusion malware using new-age machine learning techniques with reduced label dependency and identifies the most effective combination of feature selection and classification technique for this purpose. The proposed model, L2 Regularized Autoencoder Enabled Ladder Networks Classifier (RAELN-Classifier), is developed based on a combinatory analysis of various feature selection techniques like FSFC, variants of autoencoders and semisupervised classification techniques such as ladder networks. The model is trained and tested over UNSW-NB15 and benchmark NSL-KDD datasets for accurate real time model performance evaluation using overall accuracy as well as per-class accuracy and was found to result in higher accuracy compared to similar baseline and state-of-the-art models.
一种降低标签依赖的恶意软件分类新组合模型
近年来,随着技术的进步,恶意软件带来的安全威胁越来越多。安全分析人员检测和缓解恶意软件的第一步是对其进行分类。本文旨在使用减少标签依赖的新时代机器学习技术对网络入侵恶意软件进行分类,并确定为此目的最有效的特征选择和分类技术组合。提出的L2正则化自编码器支持阶梯网络分类器(RAELN-Classifier)模型是基于对各种特征选择技术(如FSFC)、自编码器变体和半监督分类技术(如阶梯网络)的组合分析而开发的。该模型在UNSW-NB15和基准NSL-KDD数据集上进行了训练和测试,使用整体精度和每级精度对模型进行了准确的实时性能评估,结果发现,与类似的基线和最先进的模型相比,该模型具有更高的精度。
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