Search Paper
  • Home
  • Login
  • Categories
  • Post URL
  • Academic Resources
  • Contact Us

 

DROIDSWAN: DETECTING MALICIOUS ANDROID APPLICATIONS BASED ON STATIC FEATURE ANALYSIS

google+
Views: 414                 

Author :  Babu Rajesh V

Affiliation :  Centre for Development of Advanced Computing

Country :  India

Category :  Networks & Communications

Volume, Issue, Month, Year :  Volume 5, Number 13, July, 2015

Abstract :


Android being a widely used mobile platform has witnessed an increase in the number of malicious samples on its market place. The availability of multiple sources for downloading applications has also contributed to users falling prey to malicious applications. Classification of an Android application as malicious or benign remains a challenge as malicious applications maneuver to pose themselves as benign. This paper presents an approach which extracts various features from Android Application Package file (APK) using static analysis and subsequently classifies using machine learning techniques. The contribution of this work includes deriving, extracting and analyzing crucial features of Android applications that aid in efficient classification. The analysis is carried out using various machine learning algorithms with both weighted and non-weighted approaches. It was observed that weighted approach depicts higher detection rates using fewer features. Random Forest algorithm exhibite

Keyword :  Mobile Security, Malware, Static Analysis, Machine Learning, Android

Journal/ Proceedings Name :  International Journal of Computer Science & Information Technology (IJCSIT)

URL :  http://airccj.org/CSCP/vol5/csit54415.pdf

User Name : alex
Posted 22-02-2017 on 15:38:21 AEDT



Related Research Work

  • An Efficient Deep Learning Approach For Network Intrusion Detection System On Software Defined Network
  • Self-protection Mechanism For Wireless Sensor Networks
  • Human Mobility Patterns Modelling Using Cdrs
  • Effects Of Mac Parameters On The Performance Of Ieee 802.11 Dcf In Ns-3

About Us | Post Cfp | Share URL Main | Share URL category | Post URL
All Rights Reserved @ Call for Papers - Conference & Journals