Malicious software is recognized as a threat at both the individual and national levels due to the threat to critical infrastructures such as energy systems and communication networks, which are increasingly subject to probes and attacks. The high variability and creativity of malware strategies and anti-detection techniques significantly complicate their detection by traditional methods. Machine learning has previously proven to be an effective method to resolve malware classification issues. We propose using the transfer learning technique to employ promising algorithms from other problem domains and test their efficacy in the problem of malware detection. In this paper, we consider two approaches that utilize pre-trained models f...
The rapid increase of malware attacks has become one of the main threats to computer security. Findi...
Malware is a serious risk to any software application whether it is standalone or over the network. ...
This project aims to present the functionality and accuracy of five different machine learning algor...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
Research in the field of malware classification often relies on machine learning models that are tra...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
Commercially available antivirus software relies on a traditional malware detection technique known ...
Performing large-scale malware classification is increasingly becoming a critical step in malware an...
Malware is becoming a major cybersecurity threat with increasing frequency every day. There are seve...
Any malicious software designed to cause harm or damage to a computer system can be termed as malwar...
In this Internet age, there are increasingly many threats to the security and safety of users daily....
Malware detection plays a crucial role in computer security. Recent researches mainly use machine le...
The increasing sophistication of malware variants such as encryption, polymorphism, and obfuscation ...
Malware, short for malicious software, is any software program designed to cause harm to a computer ...
The number of new malwares created every day is at an all-time high, one of the main reasons is that...
The rapid increase of malware attacks has become one of the main threats to computer security. Findi...
Malware is a serious risk to any software application whether it is standalone or over the network. ...
This project aims to present the functionality and accuracy of five different machine learning algor...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
Research in the field of malware classification often relies on machine learning models that are tra...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
Commercially available antivirus software relies on a traditional malware detection technique known ...
Performing large-scale malware classification is increasingly becoming a critical step in malware an...
Malware is becoming a major cybersecurity threat with increasing frequency every day. There are seve...
Any malicious software designed to cause harm or damage to a computer system can be termed as malwar...
In this Internet age, there are increasingly many threats to the security and safety of users daily....
Malware detection plays a crucial role in computer security. Recent researches mainly use machine le...
The increasing sophistication of malware variants such as encryption, polymorphism, and obfuscation ...
Malware, short for malicious software, is any software program designed to cause harm to a computer ...
The number of new malwares created every day is at an all-time high, one of the main reasons is that...
The rapid increase of malware attacks has become one of the main threats to computer security. Findi...
Malware is a serious risk to any software application whether it is standalone or over the network. ...
This project aims to present the functionality and accuracy of five different machine learning algor...