DeepDroid:使用深度学习检测Android恶意软件的特征选择方法

Arvind Mahindru, A. L. Sangal
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引用次数: 19

摘要

智能手机现在可以通过各种应用程序用于各种用途,如网上银行,社交网络,网页浏览,无处不在的服务,彩信以及更多的日常必需品。然而,由于这些应用程序的开放性和在市场上的高度普及,它们极易受到各种恶意软件的攻击。问题出在Android应用的底层权限模型上。这些应用程序在安装和运行期间需要几个敏感的权限,这可能会导致恶意软件的安全漏洞。因此,有必要开发一种恶意软件检测,可以提供一个有效的解决方案,以保护移动用户免受任何恶意威胁。在本文中,我们提出了一个基于特征选择方法和深度神经网络作为分类器原理的框架。在本研究中,我们对12万个Android应用程序进行了实证评估,并应用了五种不同的特征选择技术。其中,通过使用主成分分析(PCA)形成的一组特征,可以从现实世界的应用程序中检测出94%的Android恶意软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepDroid: Feature Selection approach to detect Android malware using Deep Learning
Smartphones are now able to use for various purposes such as online banking, social networking, web browsing, ubiquitous services, MMS, and more daily essential needs through various apps. However, these apps are highly vulnerable to various types of malware attacks attributed to their open nature and high popularity in the market. The fault lies in the underneath permission model of Android apps. These apps need several sensitive permissions during their installation and runtime, which enables possible security breaches by malware. Hence, there is a requirement to develop a malware detection that can provide an effective solution to defense the mobile user from any malicious threat. In this paper, we proposed a framework which works on the principals of feature selection methods and Deep Neural Network (DNN) as a classifier. In this study, we empirically evaluate 1,20,000 Android apps and applied five different feature selection techniques. Out of which by using a set of features formed by Principal component analysis (PCA)can able to detect 94% Android malware from real-world apps.
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