A New Malware Detection System Using a High Performance-ELM method

06/27/2019
by   Shahab Shamshirband, et al.
0

A vital element of a cyberspace infrastructure is cybersecurity. Many protocols proposed for security issues, which leads to anomalies that affect the related infrastructure of cyberspace. Machine learning (ML) methods used to mitigate anomalies behavior in mobile devices. This paper aims to apply a High Performance Extreme Learning Machine (HP-ELM) to detect possible anomalies in two malware datasets. Two widely used datasets (the CTU-13 and Malware) are used to test the effectiveness of HP-ELM. Extensive comparisons are carried out in order to validate the effectiveness of the HP-ELM learning method. The experiment results demonstrate that the HP-ELM was the highest accuracy of performance of 0.9592 for the top 3 features with one activation function.

READ FULL TEXT

page 13

page 19

page 20

research
10/23/2019

Deep learning guided Android malware and anomaly detection

In the past decade, the cyber-crime related to mobile devices has increa...
research
08/31/2023

MONDEO: Multistage Botnet Detection

Mobile devices have widespread to become the most used piece of technolo...
research
05/31/2022

Dataset Bias in Android Malware Detection

Researchers have proposed kinds of malware detection methods to solve th...
research
05/09/2023

Quantum Machine Learning for Malware Classification

In a context of malicious software detection, machine learning (ML) is w...
research
11/10/2020

SeqMobile: A Sequence Based Efficient Android Malware Detection System Using RNN on Mobile Devices

With the proliferation of Android malware, the demand for an effective a...
research
09/25/2020

Evasive Windows Malware: Impact on Antiviruses and Possible Countermeasures

The perpetual opposition between antiviruses and malware leads both part...
research
03/24/2022

MERLIN – Malware Evasion with Reinforcement LearnINg

In addition to signature-based and heuristics-based detection techniques...

Please sign up or login with your details

Forgot password? Click here to reset