一种android恶意软件检测的人工智能模型

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-08-18 DOI:10.3390/informatics10030067
Fatma Taher, Omar Al Fandi, Mousa Al Kfairy, Hussam Al Hamadi, S. Alrabaee
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引用次数: 0

摘要

智能手机在我们的日常生活中如此普及有很多原因。虽然它们的好处是不可否认的,但Android用户必须警惕恶意应用。本研究的目标是开发一个广泛的框架,用于使用多个深度学习分类器检测Android恶意软件;这个框架被命名为DroidMDetection。为了提供精确、动态的Android恶意软件检测和不同恶意软件家族的聚类,该框架使用了基于深度学习和自然语言处理(NLP)技术的独特方法。与其他类似的工作相比,DroidMDetection(1)使用API调用和意图以及常见的权限来完成广泛的恶意软件分析,(2)使用深度自动编码器生成的特征摘要来将检测到的恶意软件样本聚类到恶意软件家族组中,(3)受益于特征提取和选择的两种方法。使用大量参考数据集对该框架进行深入分析。无论使用何种评价参数,DroidMDetection的检测率都很高,创建的聚类相对一致。DroidMDetection超越了最先进的解决方案MaMaDroid, DroidMalwareDetector, MalDozer和DroidAPIMiner,我们用来衡量其有效性的所有指标。
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A Proposed Artificial Intelligence Model for Android-Malware Detection
There are a variety of reasons why smartphones have grown so pervasive in our daily lives. While their benefits are undeniable, Android users must be vigilant against malicious apps. The goal of this study was to develop a broad framework for detecting Android malware using multiple deep learning classifiers; this framework was given the name DroidMDetection. To provide precise, dynamic, Android malware detection and clustering of different families of malware, the framework makes use of unique methodologies built based on deep learning and natural language processing (NLP) techniques. When compared to other similar works, DroidMDetection (1) uses API calls and intents in addition to the common permissions to accomplish broad malware analysis, (2) uses digests of features in which a deep auto-encoder generates to cluster the detected malware samples into malware family groups, and (3) benefits from both methods of feature extraction and selection. Numerous reference datasets were used to conduct in-depth analyses of the framework. DroidMDetection’s detection rate was high, and the created clusters were relatively consistent, no matter the evaluation parameters. DroidMDetection surpasses state-of-the-art solutions MaMaDroid, DroidMalwareDetector, MalDozer, and DroidAPIMiner across all metrics we used to measure their effectiveness.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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