DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD

Various types of attacks (malware) are currently carried out by infiltrating interconnected systems by exploiting vulnerabilities found in various devices and software applications. the development of a malware defense system needs to be developed to fight malware attacks and detect the potential fo...

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Main Author: Pradana Gemilang, Hafiz
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/58856
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:58856
spelling id-itb.:588562021-09-06T14:15:12ZDESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD Pradana Gemilang, Hafiz Indonesia Theses malware, self-supervised learning, machine learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/58856 Various types of attacks (malware) are currently carried out by infiltrating interconnected systems by exploiting vulnerabilities found in various devices and software applications. the development of a malware defense system needs to be developed to fight malware attacks and detect the potential for new malware to emerge. This study aims to detect malware to avoid attacks on the devices used. BERT self-supervised learning is used as a method to detect malware types. The dataset uses GAN and EMBER data to detect two types of malware, namely Mallicious and Benign. The results show that the use of BERT is able to detect up to 85% accuracy and provides a fairly good performance. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Various types of attacks (malware) are currently carried out by infiltrating interconnected systems by exploiting vulnerabilities found in various devices and software applications. the development of a malware defense system needs to be developed to fight malware attacks and detect the potential for new malware to emerge. This study aims to detect malware to avoid attacks on the devices used. BERT self-supervised learning is used as a method to detect malware types. The dataset uses GAN and EMBER data to detect two types of malware, namely Mallicious and Benign. The results show that the use of BERT is able to detect up to 85% accuracy and provides a fairly good performance.
format Theses
author Pradana Gemilang, Hafiz
spellingShingle Pradana Gemilang, Hafiz
DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
author_facet Pradana Gemilang, Hafiz
author_sort Pradana Gemilang, Hafiz
title DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
title_short DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
title_full DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
title_fullStr DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
title_full_unstemmed DESIGN AND IMPLEMENTATION OF ARTIFICIAL DATASET MALWARE USING SELF-SUPERVISED LEARNING METHOD
title_sort design and implementation of artificial dataset malware using self-supervised learning method
url https://digilib.itb.ac.id/gdl/view/58856
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