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Comprehensive review and analysis of anti-malware apps for smartphones

机译:智能手机反恶意软件应用的全面审查与分析

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The new and disruptive technologies for ensuring smartphone security are very limited and largely scattered. The available options and gaps in this research area must be analysed to provide valuable insights about the present technological environment. This work illustrates the research landscape by mapping the existing literature to a comprehensive taxonomy with four categories. The first category includes review and survey articles related to smartphone security. The second category includes papers on smartphone security solutions. The third category includes smartphone malware studies that examine the security aspects of smartphones and the threats posed by malware. The fourth category includes ranking, clustering and classification studies that classify malware based on their families or security risk levels. Several smartphone security apps have also been analysed and compared based on their mechanisms to identify their contents and distinguishing features by using several evaluation metrics and parameters. Two malware detection techniques, namely, machine-learning-based and non-machine-learning-based malware detection, are drawn from the review. The basic characteristics of this emerging field of research are discussed in the following aspects: (1) motivation behind the development of security measures for different smartphone operating system (Oss), (2) open challenges that compromise the usability and personal information of users and (3) recommendations for enhancing smartphone security. This work also reviews the functionalities and services of several anti-malware companies to fully reveal their security mechanisms, features and strategies. This work also highlights the open challenges and issues related to the evaluation and benchmarking of malware detection techniques to identify the best malware detection apps for smartphones.
机译:用于确保智能手机安全性的新的和破坏性技术非常有限,很大程度上分散。必须分析本研究领域的可用选项和差距,为目前的技术环境提供有价值的见解。这项工作通过将现有文献映射到具有四个类别的综合分类法来说明了研究景观。第一类包括与智能手机安全相关的审查和调查文章。第二类包括智能手机安全解决方案的论文。第三类包括智能手机恶意软件研究,检查智能手机的安全方面和恶意软件所带来的威胁。第四类包括基于其家庭或安全风险水平对恶意软件进行分类的排名,聚类和分类研究。还基于其机制进行了分析并比较了几个智能手机安全应用程序,以通过使用多个评估指标和参数来识别其内容和区分特征。从审查中绘制了两个恶意软件检测技术,即基于机器学习和基于非机器学习的恶意软件检测。以下几个方面讨论了这一新研究领域的基本特征:(1)不同智能手机操作系统(OSS)的安全措施发展背后的动机,(2)开放挑战,损害用户的可用性和个人信息和个人信息(3)加强智能手机安全的建议。这项工作还审查了几家反恶意软件公司的功能和服务,以充分揭示其安全机制,特征和策略。这项工作还突出了与恶意软件检测技术的评估和基准相关的开放挑战和问题,以确定智能手机的最佳恶意软件检测应用。

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