Andro-Simnet: Android Malware Family Classification Using Social Network Analysis

06/22/2019
by   Hye Min Kim, et al.
0

While the rapid adaptation of mobile devices changes our daily life more conveniently, the threat derived from malware is also increased. There are lots of research to detect malware to protect mobile devices, but most of them adopt only signature-based malware detection method that can be easily bypassed by polymorphic and metamorphic malware. To detect malware and its variants, it is essential to adopt behavior-based detection for efficient malware classification. This paper presents a system that classifies malware by using common behavioral characteristics along with malware families. We measure the similarity between malware families with carefully chosen features commonly appeared in the same family. With the proposed similarity measure, we can classify malware by malware's attack behavior pattern and tactical characteristics. Also, we apply a community detection algorithm to increase the modularity within each malware family network aggregation. To maintain high classification accuracy, we propose a process to derive the optimal weights of the selected features in the proposed similarity measure. During this process, we find out which features are significant for representing the similarity between malware samples. Finally, we provide an intuitive graph visualization of malware samples which is helpful to understand the distribution and likeness of the malware networks. In the experiment, the proposed system achieved 97 accuracy for malware classification and 95 cross-validation using the real malware dataset.

READ FULL TEXT

page 2

page 3

page 5

page 6

page 7

page 9

page 11

page 12

research
11/13/2015

Novel Feature Extraction, Selection and Fusion for Effective Malware Family Classification

Modern malware is designed with mutation characteristics, namely polymor...
research
11/10/2018

Metamorphic Malware Detection Using Linear Discriminant Analysis and Graph Similarity

The most common malware detection approaches which are based on signatur...
research
08/09/2021

Malware-on-the-Brain: Illuminating Malware Byte Codes with Images for Malware Classification

Malware is a piece of software that was written with the intent of doing...
research
11/11/2022

SUNDEW: An Ensemble of Predictors for Case-Sensitive Detection of Malware

Malware programs are diverse, with varying objectives, functionalities, ...
research
11/21/2017

DeepSign: Deep Learning for Automatic Malware Signature Generation and Classification

This paper presents a novel deep learning based method for automatic mal...
research
11/18/2022

Clustering based opcode graph generation for malware variant detection

Malwares are the key means leveraged by threat actors in the cyber space...
research
01/29/2021

Peeler: Profiling Kernel-Level Events to Detect Ransomware

Ransomware is a growing threat that typically operates by either encrypt...

Please sign up or login with your details

Forgot password? Click here to reset