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 151160 of 431 papers

TitleStatusHype
The Efficacy of Transformer-based Adversarial Attacks in Security Domains0
Burning the Adversarial Bridges: Robust Windows Malware Detection Against Binary-level Mutations0
On the Effectiveness of Adversarial Samples against Ensemble Learning-based Windows PE Malware Detectors0
Efficient Concept Drift Handling for Batch Android Malware Detection ModelsCode0
Adversarially Robust Learning with Optimal Transport Regularized DivergencesCode0
The Power of MEME: Adversarial Malware Creation with Model-Based Reinforcement LearningCode0
Assessing Cyclostationary Malware Detection via Feature Selection and Classification0
Malware Classification using Deep Neural Networks: Performance Evaluation and Applications in Edge Devices0
Optimized Deep Learning Models for Malware Detection under Concept Drift0
A Comparison of Adversarial Learning Techniques for Malware Detection0
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