Mobile devices have been manufactured and enhanced at growing rates in the past decades. While this growth has significantly evolved the capability of these devices, their security has been falling behind. This contrast in development between capability and security of mobile devices is a significant problem with the sensitive information of the public at risk. Continuing the previous work in this field, this study identifies key Machine Learning algorithms currently being used for behavioral biometric mobile authentication schemes and aims to provide a comprehensive review of these algorithms when used with touch dynamics and phone movement. Throughout this paper the benefits, limitations, and recommendations for future work will be discussed.
翻译:在过去几十年里,移动设备已经以不断增长的速度制造和增强,虽然这种增长大大发展了这些设备的能力,但其安全性却落后了,移动设备的能力和安全性的发展与移动设备的安全性形成对照,这是面临风险的公众敏感信息的一个重大问题。继续以前在这一领域的工作,这项研究确定了目前用于行为生物鉴别生物鉴定移动认证计划的关键机器学习算法,目的是在使用触摸动态和电话移动时对这些算法进行全面审查。本文件将讨论今后工作的好处、限制和建议。