SOTAVerified

Malware Detection

Malware Detection is a significant part of endpoint security including workstations, servers, cloud instances, and mobile devices. Malware Detection is used to detect and identify malicious activities caused by malware. With the increase in the variety of malware activities on CMS based websites such as malicious malware redirects on WordPress site (Aka, WordPress Malware Redirect Hack) where the site redirects to spam, being the most widespread, the need for automatic detection and classifier amplifies as well. The signature-based Malware Detection system is commonly used for existing malware that has a signature but it is not suitable for unknown malware or zero-day malware

Source: The Threat of Adversarial Attacks on Machine Learning in Network Security - A Survey

Papers

Showing 201225 of 431 papers

TitleStatusHype
Malware Classification using a Hybrid Hidden Markov Model-Convolutional Neural Network0
Malware Classification using Deep Neural Networks: Performance Evaluation and Applications in Edge Devices0
Malware Classification Using Long Short-Term Memory Models0
Malware Classification with GMM-HMM Models0
Malware Detection and Prevention using Artificial Intelligence Techniques0
Malware Detection at the Edge with Lightweight LLMs: A Performance Evaluation0
Malware Detection in Docker Containers: An Image is Worth a Thousand Logs0
Malware Detection in IOT Systems Using Machine Learning Techniques0
Malware Detection using Artificial Bee Colony Algorithm0
Malware Detection Using Dynamic Birthmarks0
Malware Detection using Machine Learning and Deep Learning0
Malware Evasion Attack and Defense0
Malware families discovery via Open-Set Recognition on Android manifest permissions0
Marvolo: Programmatic Data Augmentation for Practical ML-Driven Malware Detection0
Mask Off: Analytic-based Malware Detection By Transfer Learning and Model Personalization0
MDEA: Malware Detection with Evolutionary Adversarial Learning0
MERLIN -- Malware Evasion with Reinforcement LearnINg0
Metamorphic Malware Evolution: The Potential and Peril of Large Language Models0
ML-based IoT Malware Detection Under Adversarial Settings: A Systematic Evaluation0
MORPH: Towards Automated Concept Drift Adaptation for Malware Detection0
Multifamily Malware Models0
Natural Language Outlines for Code: Literate Programming in the LLM Era0
Optimized Deep Learning Models for Malware Detection under Concept Drift0
New Approach to Malware Detection Using Optimized Convolutional Neural Network0
Benchmark Static API Call Datasets for Malware Family Classification0
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