Malware is a software designed to disrupt or even damage computer system or do other unwanted actions. Nowadays, malware is a common threat of the World Wide Web. Anti-malware protection and intrusion detection can be significantly supported by a comprehensive and extensive analysis of data on the Web. The aim of such analysis is a classification of the collected data into two sets, i.e., normal and malicious data. In this paper the authors investigate the use of three supervised learning methods for data mining to support the malware detection. The results of applications of Support Vector Machine, Naive Bayes and k-Nearest Neighbors techniques to classification of the data taken from devices located in many units, organizations and monit...
This paper describes our research in evaluating the use of supervised data mining algorithms for an ...
Each year, malware issues remain one of the cybersecurity concerns since malware’s complexity is con...
The principal focus of the present dissertation is to develop new machine learning methods for incre...
Malware is a software designed to disrupt or even damage computer system or do other unwanted action...
A research endeavor in the field of cyber security is being carried out under the working title of "...
Malwares on the websites can be harmful for the host machine. It may result in security breach, data...
In the Internet age, malware poses a serious threat to information security. Many studies have been ...
This research study mainly focused on the dynamic malware detection. Malware progressively changes, ...
New types of malware with unique characteristics are being created daily in legion. This exponential...
Malware or malicious software is one of the major threats in the internet today and there are thousa...
We propose a classification model with various machine learning algorithms to adequately recognise m...
Malware detection is an important factor in the security of the computer systems. However, currently...
Malware is becoming a major cybersecurity threat with increasing frequency every day. There are seve...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
This paper describes our research in evaluating the use of supervised data mining algorithms for an ...
Each year, malware issues remain one of the cybersecurity concerns since malware’s complexity is con...
The principal focus of the present dissertation is to develop new machine learning methods for incre...
Malware is a software designed to disrupt or even damage computer system or do other unwanted action...
A research endeavor in the field of cyber security is being carried out under the working title of "...
Malwares on the websites can be harmful for the host machine. It may result in security breach, data...
In the Internet age, malware poses a serious threat to information security. Many studies have been ...
This research study mainly focused on the dynamic malware detection. Malware progressively changes, ...
New types of malware with unique characteristics are being created daily in legion. This exponential...
Malware or malicious software is one of the major threats in the internet today and there are thousa...
We propose a classification model with various machine learning algorithms to adequately recognise m...
Malware detection is an important factor in the security of the computer systems. However, currently...
Malware is becoming a major cybersecurity threat with increasing frequency every day. There are seve...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
Background. Malware has been a major issue for years and old signature scanning methods for detectin...
This paper describes our research in evaluating the use of supervised data mining algorithms for an ...
Each year, malware issues remain one of the cybersecurity concerns since malware’s complexity is con...
The principal focus of the present dissertation is to develop new machine learning methods for incre...