AbstractGenerating multi-label rules in associative classification (AC) from single label data sets is considered a challenging task making the number of existing algorithms for this task rare. Current AC algorithms produce only the largest frequency class connected with a rule in the training data set and discard all other classes even though these classes have data representation with the rule’s body. In this paper, we deal with the above problem by proposing an AC algorithm called Enhanced Multi-label Classifiers based Associative Classification (eMCAC). This algorithm discovers rules associated with a set of classes from single label data that other current AC algorithms are unable to induce. Furthermore, eMCAC minimises the number of e...
Phishing attacks are the most common type of cyber-attacks used to obtain sensitive information and ...
The phishing attack is one of the very common attacks deployed using the social engineering techniqu...
Experimental and theoretical evidences showed that multiple classifier systems (MCSs) can outperform...
Website phishing is considered one of the crucial security challenges for the online community due t...
Associative Classification (AC) in data mining is a rule based approach that uses association rule t...
Phishing websites are fake websites that are created by dishonest people to mimic webpages of real w...
Social media has significantly grown as a preferred medium of communication for individuals and grou...
Phishing is a criminal technique employing both social engineering and technical subterfuge to steal...
Classification Data Mining (DM) Techniques can be a very useful tool in detecting and identifying e-...
Building fast and accurate classifiers for large-scale databases is an important task in data mining...
Detecting packer programs is a key step in the defense against malicious programs and plays a key ro...
Building fast and accurate classifiers for large-scale databases is an important task in data mining...
Abstract. Classification aims to map a data instance to its appropriate class (or label). In associa...
Machine learning (ML) provides popular tools for data analysis. It has as of late indicated promisin...
Most recent work has been focused on associative classification technique. Most research work of cla...
Phishing attacks are the most common type of cyber-attacks used to obtain sensitive information and ...
The phishing attack is one of the very common attacks deployed using the social engineering techniqu...
Experimental and theoretical evidences showed that multiple classifier systems (MCSs) can outperform...
Website phishing is considered one of the crucial security challenges for the online community due t...
Associative Classification (AC) in data mining is a rule based approach that uses association rule t...
Phishing websites are fake websites that are created by dishonest people to mimic webpages of real w...
Social media has significantly grown as a preferred medium of communication for individuals and grou...
Phishing is a criminal technique employing both social engineering and technical subterfuge to steal...
Classification Data Mining (DM) Techniques can be a very useful tool in detecting and identifying e-...
Building fast and accurate classifiers for large-scale databases is an important task in data mining...
Detecting packer programs is a key step in the defense against malicious programs and plays a key ro...
Building fast and accurate classifiers for large-scale databases is an important task in data mining...
Abstract. Classification aims to map a data instance to its appropriate class (or label). In associa...
Machine learning (ML) provides popular tools for data analysis. It has as of late indicated promisin...
Most recent work has been focused on associative classification technique. Most research work of cla...
Phishing attacks are the most common type of cyber-attacks used to obtain sensitive information and ...
The phishing attack is one of the very common attacks deployed using the social engineering techniqu...
Experimental and theoretical evidences showed that multiple classifier systems (MCSs) can outperform...