Comparison of Regression Methods in Permission Based Android Malware Detection

Durmuş Özkan Şahin, Oğuz Emre Kural, S. Akleylek, E. Kılıç
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引用次数: 1

Abstract

In this study, applications developed for Android platforms are tested by static analysis based on machine learning. Permissions that have an important place in the security of the Android operating system are used as attributes. Using the regression techniques, which are among the types of machine learning, the applications are tested. Four different regression techniques are used in this study. These are linear regression, multilayered neural network, additive regression and regression techniques based on sequential minimal optimization. As a result of 10 cross-validations, the best result is obtained by linear regression, while the worst result is obtained by regression techniques based on sequential minimal optimization. The result obtained from linear regression is 0:8655 according to the Pearson correlation coefficient.
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基于权限的Android恶意软件检测回归方法比较
在本研究中,针对Android平台开发的应用程序通过基于机器学习的静态分析进行测试。在Android操作系统的安全性中具有重要地位的权限被用作属性。使用回归技术,这是机器学习的类型之一,测试应用程序。本研究使用了四种不同的回归技术。这些是线性回归、多层神经网络、加性回归和基于顺序最小优化的回归技术。经过10次交叉验证,线性回归得到了最好的结果,而基于顺序最小优化的回归技术得到了最差的结果。根据Pearson相关系数,线性回归的结果为0:8655。
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