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A new malware detection system using a high performance-ELM method

Shamshirband, Shahab; Chronopoulos, Anthony T.
Chapter
Published version
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Shamshirband (Locked)
URI
http://hdl.handle.net/11250/2629552
Date
2019
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  • Institutt for datateknologi og informatikk [3771]
  • Publikasjoner fra CRIStin - NTNU [19694]
Original version
10.1145/3331076.3331119
Abstract
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 of0.9592 for the top 3 features with one activation function.
Publisher
ACM (Proceedings of the 23rd International Database Engineering & Applications Symposium)

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