Analysis of Features Selection and Machine Learning Classifier in Android Malware Detection

M. Z. Mas'ud, S. Sahib, M. F. Abdollah, S. R. Selamat, R. Yusof
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引用次数: 64

Abstract

The proliferation of Android-based mobile devices and mobile applications in the market has triggered the malware author to make the mobile devices as the next profitable target. With user are now able to use mobile devices for various purposes such as web browsing, ubiquitous services, online banking, social networking, MMS and etc, more credential information is expose to exploitation. Applying a similar security solution that work in Desktop environment to mobile devices may not be proper as mobile devices have a limited storage, memory, CPU and power consumption. Hence, there is a need to develop a mobile malware detection that can provide an effective solution to defence the mobile user from any malicious threat and at the same time address the limitation of mobile devices environment. Prior to this matter, this research focused on evaluating the best features selection to be used in the best machine-learning classifiers. To find the best combination of both features selection and classifier, five sets of different feature selection are applies to five different machine learning classifiers. The classifier outcome is evaluated using the True Positive Rate (TPR), False Positive Rate (FPR), and Accuracy. The best combination of both features selection and classifier can be used to reduce features selection and at the same time able to classify the infected android application accurately.
Android恶意软件检测中的特征选择与机器学习分类器分析
基于android的移动设备和移动应用程序在市场上的激增促使恶意软件的作者将移动设备作为下一个有利可图的目标。随着用户现在能够使用移动设备进行各种目的,如网页浏览,无处不在的服务,网上银行,社交网络,彩信等,更多的凭据信息暴露于利用。将在桌面环境中工作的类似安全解决方案应用于移动设备可能不合适,因为移动设备具有有限的存储、内存、CPU和功耗。因此,有必要开发一种移动恶意软件检测,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,同时解决移动设备环境的限制。在此之前,本研究的重点是评估最佳机器学习分类器中使用的最佳特征选择。为了找到特征选择和分类器的最佳组合,将五组不同的特征选择应用于五种不同的机器学习分类器。分类器结果使用真阳性率(TPR),假阳性率(FPR)和准确性进行评估。特征选择和分类器的最佳结合可以减少特征选择,同时能够准确地对受感染的android应用进行分类。
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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