scispace - formally typeset
Open AccessJournal ArticleDOI

A Comprehensive Review on Malware Detection Approaches

Omer Aslan, +1 more
- 03 Jan 2020 - 
- Vol. 8, pp 6249-6271
Reads0
Chats0
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.

read more

Content maybe subject to copyright    Report

Citations
More filters
Posted Content

Mill.jl and JsonGrinder.jl: automated differentiable feature extraction for learning from raw JSON data.

TL;DR: The authorsMill and JsonGrinder The authors are a tandem of libraries, which fully automates the conversion from raw data input to vector representation, which is one of the key components of many successful applications of machine learning methods.

Relational Deep Learning Detection with Multi-Sequence Representation for Insider Threats

TL;DR: This study introduces a novel model to detect insider threats by representing audit data as multivariate time series to explicitly learn the existing inter-relations between activity streams using a Recurrent Neural Network (RNN).
Journal ArticleDOI

Algebraic Structures Induced by the Insertion and Detection of Malware

TL;DR: In this paper , the authors prove that hidden algebraic structures as equipped posets and their categories of representations are behind the research of some infections, and properties of these categories are given to provide a better understanding of different infection techniques.
Posted Content

Quickest Inference of Network Cascades with Noisy Information.

TL;DR: In this article, the authors studied the problem of estimating the source of a network cascade given a time series of noisy information about the spread, and derived near-optimal estimators for simple cascade dynamics and network topologies.

Role of Legislation , Need of Strong Legal Framework and Procedures to Contest Effectively with Cybercrime and Money Laundering

TL;DR: In this article , the importance of applying strong regulations as well as morality and ethical principles to tackle white-collar crime is stressed, which is on the rise in both the public and private sectors.
References
More filters
Book

Learning Deep Architectures for AI

TL;DR: The motivations and principles regarding learning algorithms for deep architectures, in particular those exploiting as building blocks unsupervised learning of single-layer modelssuch as Restricted Boltzmann Machines, used to construct deeper models such as Deep Belief Networks are discussed.
Proceedings ArticleDOI

A detailed analysis of the KDD CUP 99 data set

TL;DR: A new data set is proposed, NSL-KDD, which consists of selected records of the complete KDD data set and does not suffer from any of mentioned shortcomings.
Proceedings ArticleDOI

DREBIN: Effective and Explainable Detection of Android Malware in Your Pocket.

TL;DR: DREBIN is proposed, a lightweight method for detection of Android malware that enables identifying malicious applications directly on the smartphone and outperforms several related approaches and detects 94% of the malware with few false alarms.
Proceedings ArticleDOI

Data mining methods for detection of new malicious executables

TL;DR: This work presents a data mining framework that detects new, previously unseen malicious executables accurately and automatically and more than doubles the current detection rates for new malicious executable.
Proceedings ArticleDOI

Crowdroid: behavior-based malware detection system for Android

TL;DR: The method is shown to be an effective means of isolating the malware and alerting the users of a downloaded malware, showing the potential for avoiding the spreading of a detected malware to a larger community.
Related Papers (5)
Trending Questions (1)
How do I scan a pixel for malware?

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.