Title of article :
An Informative and Comprehensive Behavioral Characteristics Analysis Methodology of Android Application for Data Security in Brain-Machine Interfacing
Author/Authors :
Su, Xin Hunan Police Academy - Changsha, China , Gong, Qingbo Zhejiang Economic Information Center - Hangzhou, China , Zheng, Yi Zhejiang Economic Information Center - Hangzhou, China , Liu, Xuchong Hunan Police Academy - Changsha, China , Li, Kuan-Ching Department of Computer Science and Information Engineering - Providence University - Taichung, Taiwan
Abstract :
Recently, brain-machine interfacing is very popular that link humans and artificial devices through brain signals which lead
to corresponding mobile application as supplementary. ,e Android platform has developed rapidly because of its good user
experience and openness. Meanwhile, these characteristics of this platform, which cause the amazing pace of Android
malware, pose a great threat to this platform and data correction during signal transmission of brain-machine interfacing.
Many previous works employ various behavioral characteristics to analyze Android application (or app) and detect Android
malware to protect signal data secure. However, with the development of Android app, category of Android app tends to be
diverse, and the Android malware behavior tends to be complex. ,is situation makes existing Android malware detections
complicated and inefficient. In this paper, we propose a broad analysis, gathering as many behavior characteristics of an app
as possible and compare these behavior characteristics in several metrics. First, we extract static and dynamic behavioral
characteristic from Android app in an automatic manner. Second, we explain the decision we made in each kind of
behavioral characteristic we choose for Android app analysis and Android malware detection. ,ird, we design a detailed
experiment, which compare the efficiency of each kind of behavior characteristic in different aspects. ,e results of experiment also show Android malware detection performance of these behavior characteristics combine with well-known
machine learning algorithms.
Keywords :
app , Brain-Machine , Analysis , BMI
Journal title :
Computational and Mathematical Methods in Medicine