Deep Learning Techniques for Android Botnet Detection

Author:

Yerima Suleiman Y.,Alzaylaee Mohammed K.ORCID,Shajan Annette,P VinodORCID

Abstract

Android is increasingly being targeted by malware since it has become the most popular mobile operating system worldwide. Evasive malware families, such as Chamois, designed to turn Android devices into bots that form part of a larger botnet are becoming prevalent. This calls for more effective methods for detection of Android botnets. Recently, deep learning has gained attention as a machine learning based approach to enhance Android botnet detection. However, studies that extensively investigate the efficacy of various deep learning models for Android botnet detection are currently lacking. Hence, in this paper we present a comparative study of deep learning techniques for Android botnet detection using 6802 Android applications consisting of 1929 botnet applications from the ISCX botnet dataset. We evaluate the performance of several deep learning techniques including: CNN, DNN, LSTM, GRU, CNN-LSTM, and CNN-GRU models using 342 static features derived from the applications. In our experiments, the deep learning models achieved state-of-the-art results based on the ISCX botnet dataset and also outperformed the classical machine learning classifiers.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference30 articles.

1. McAfee Mobile Threat Report Q1 https://www.mcafee.com/en-us/consumer-support/2020-mobile-threat-report.html

2. “Detecting and Eliminating Chamois, a Fraud Botnet on Android” Android Developers Blog https://android-developers.googleblog.com/2017/03/detecting-and-eliminating-chamois-fraud.html

3. Chris Brook “Google Eliminates Android Adfraud Botnet Chamois” Threat Post https://threatpost.com/google-eliminates-android-adfraud-botnet-chamois/124311/

4. Rashid “Chamois: The Big Botnet You Didn’t Hear about” April 2019 Decipher, by Duo Security https://duo.com/decipher/chamois-the-big-botnet-you-didnt-hear-about

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