Analyzing and comparing the effectiveness of various machine learning algorithms for Android malware detection

M. Akhtar
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引用次数: 1

Abstract

Android is the most extensively adopted mobile operating system in the world. The free third-party programmes that may be downloaded and installed contribute to this success by offering a wide range of features and functionalities. However, the freedom to utilize any third-party programme has spawned a never-ending tide of ever-evolving malicious software intending to harm the user in some way, shape, or form. In this work, we propose and show many methods for detecting malware on Android. An in-process detection system is built, including data analytics. It may use the detection system to look over your current app set and find any malicious software so you can remove it. Models based on machine learning allow for this to be accomplished. It has been investigated how well the models perform with two distinct feature sets: permissions and signatures. Initially, each dataset undergoes exploratory data analysis and feature engineering to narrow down the vast array of attributes. The next step is to determine if an application is malicious or safe using one of many supervised classification models derived from data mining. Different models' performance metrics are examined to find the method that provides the best outcomes for this malware detection task. Ultimately, it is seen that the signatures-based method is superior to the permissions-based. Classification methods such as k-nearest neighbours (kNN), logistic regression, support vector machines (SVM), and random forests (RF) are all equivalent in their efficacy.
分析比较各种机器学习算法在Android恶意软件检测中的有效性
Android是世界上使用最广泛的移动操作系统。可以下载和安装的免费第三方程序通过提供广泛的特性和功能为这一成功做出了贡献。然而,使用任何第三方程序的自由催生了一股永无止境的恶意软件浪潮,这些恶意软件旨在以某种方式、形式或形式伤害用户。在这项工作中,我们提出并展示了许多检测Android恶意软件的方法。建立了一个进程内检测系统,包括数据分析。它可能会使用检测系统来查看您当前的应用程序集并找到任何恶意软件,以便您可以删除它。基于机器学习的模型可以实现这一点。研究了模型在两个不同的特性集(权限和签名)下的表现。最初,每个数据集都经过探索性数据分析和特征工程,以缩小大量属性的范围。下一步是使用来自数据挖掘的许多监督分类模型之一来确定应用程序是恶意的还是安全的。检查不同模型的性能指标,以找到为此恶意软件检测任务提供最佳结果的方法。最后,可以看出基于签名的方法优于基于权限的方法。k近邻(kNN)、逻辑回归、支持向量机(SVM)和随机森林(RF)等分类方法的效果都是相当的。
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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