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Open AccessJournal ArticleDOI

A Comprehensive Review on Malware Detection Approaches

Omer Aslan, +1 more
- 03 Jan 2020 - 
- Vol. 8, pp 6249-6271
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TLDR
This paper presents a detailed review on malware detection approaches and recent detection methods which use these approaches, and the pros and cons of each detection approach, and methods that are used in these approaches.
Abstract
According to the recent studies, malicious software (malware) is increasing at an alarming rate, and some malware can hide in the system by using different obfuscation techniques. In order to protect computer systems and the Internet from the malware, the malware needs to be detected before it affects a large number of systems. Recently, there have been made several studies on malware detection approaches. However, the detection of malware still remains problematic. Signature-based and heuristic-based detection approaches are fast and efficient to detect known malware, but especially signature-based detection approach has failed to detect unknown malware. On the other hand, behavior-based, model checking-based, and cloud-based approaches perform well for unknown and complicated malware; and deep learning-based, mobile devices-based, and IoT-based approaches also emerge to detect some portion of known and unknown malware. However, no approach can detect all malware in the wild. This shows that to build an effective method to detect malware is a very challenging task, and there is a huge gap for new studies and methods. This paper presents a detailed review on malware detection approaches and recent detection methods which use these approaches. Paper goal is to help researchers to have a general idea of the malware detection approaches, pros and cons of each detection approach, and methods that are used in these approaches.

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Citations
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Hybrid Malware Classification Method Using Segmentation-Based Fractal Texture Analysis and Deep Convolution Neural Network Features

TL;DR: A feature fusion method to combine the features extracted from pre-trained AlexNet and Inception-v3 deep neural networks with features attained using segmentation-based fractal texture analysis (SFTA) of images representing the malware code to build a multimodal representation of malicious code.
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Tight Arms Race: Overview of Current Malware Threats and Trends in Their Detection

TL;DR: A detailed meta-review of the existing surveys related to malware and its detection techniques, showing an arms race between these two sides of a barricade, is presented in this article.
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Ensemble-Based Classification Using Neural Networks and Machine Learning Models for Windows PE Malware Detection

TL;DR: An ensemble classification-based methodology for malware detection is proposed, with the best performance achieved by an ensemble of five dense and CNN neural networks, and the ExtraTrees classifier as a meta-learner.
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A systematic review on Deep Learning approaches for IoT security

TL;DR: This work aims at systematically reviewing and analyzing the research landscape about DL approaches applied to different IoT security scenarios and characterized these studies according to three main research questions, namely, the involved security aspects, the used DL network architectures, and the engaged datasets.
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A New Malware Classification Framework Based on Deep Learning Algorithms

TL;DR: In this paper, a novel deep learning-based architecture is proposed which can classify malware variants based on a hybrid model, which integrates two wide-ranging pre-trained network models in an optimized manner.
References
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Significant Permission Identification for Machine-Learning-Based Android Malware Detection

TL;DR: Significant Permission IDentification (SigPID), a malware detection system based on permission usage analysis to cope with the rapid increase in the number of Android malware, is introduced.
Proceedings ArticleDOI

Droid-Sec: deep learning in android malware detection

TL;DR: A ML-based method that utilizes more than 200 features extracted from both static analysis and dynamic analysis of Android app for malware detection demonstrates that the deep learning technique is especially suitable for Android malware detection and can achieve a high level of 96% accuracy with real-world Android application sets.

A Survey of Malware Detection Techniques

TL;DR: This paper presents a meta-modelling system that automates and automates the very labor-intensive and therefore time-heavy and expensive and expensive process of manually cataloging and annotating Malware.
Posted Content

Adversarial Perturbations Against Deep Neural Networks for Malware Classification

TL;DR: This paper shows how to construct highly-effective adversarial sample crafting attacks for neural networks used as malware classifiers, and evaluates to which extent potential defensive mechanisms against adversarial crafting can be leveraged to the setting of malware classification.
Book

Computer Security: Principles and Practice

TL;DR: Computer Security: Principles and Practice is the only text available to provide integrated, comprehensive, up-to-date coverage of the broad range of topics in this subject.
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This shows that to build an effective method to detect malware is a very challenging task, and there is a huge gap for new studies and methods.