There is an increase in global malware threats. To address this, an encryption-type ransomware has been introduced on the Android operating system. The challenges associated with malicious threats in phone use have become a pressing issue in mobile communication, disrupting user experiences and posing significant privacy threats. This study surveys commonly used machine learning techniques for detecting malicious threats in phones and examines their performance. The majority of past research focuses on customer feedback and reviews, with concerns that people might create false reviews to promote or devalue products and services for personal gain. Hence, the development of techniques for detecting malicious threats using machine learning has been a key focus. This paper presents a comprehensive comparative study of current research on the issue of malicious threats and methods for tackling these challenges. Nevertheless, a huge amount of information is required by these methods, presenting a challenge for developing robust, specialized automated anti-malware systems. This research describes the Android Applications dataset, and the accuracy of the techniques is measured using the accuracy levels of the metrics employed in this study.
翻译:全球恶意软件威胁持续增加。为应对此问题,Android操作系统上出现了一种加密型勒索软件。手机使用中的恶意威胁相关挑战已成为移动通信领域的紧迫问题,不仅干扰用户体验,还构成重大的隐私威胁。本研究综述了常用于检测手机恶意威胁的机器学习技术,并评估其性能。以往研究大多关注客户反馈和评论,但存在用户可能为个人利益编造虚假评论以推广或贬低产品服务的担忧。因此,开发基于机器学习的恶意威胁检测技术已成为关键研究方向。本文对当前关于恶意威胁问题及其应对方法的研究进行了全面比较分析。然而,这些方法需要海量信息,这对开发鲁棒、专业化的自动化反恶意软件系统构成了挑战。本研究描述了Android应用程序数据集,并通过所采用指标的准确率水平来衡量这些技术的准确性。