Recently, many scholars make use of fusion of filters to enhance the performance of spam filtering. In the past several years, a lot of effort has been devoted to different ensemble methods to achieve better performance. In reality, how to select appropriate ensemble methods towards spam filtering is an unsolved problem. In this paper, we investigate this problem through designing a framework to compare the performances among various ensemble methods. It is helpful for researchers to fight spam email more effectively in applied systems. The experimental results indicate that online based methods perform well on accuracy, while the off-line batch methods are evidently influenced by the size of data set. When a large data set is involved, the...
Feature selection is an important issue in data mining, and it is used to reduce dimensions of featu...
Anti-spam technology is developing rapidly in recent years. With the emerging applications of machin...
The paper elaborates on how text analysis influences classification—a key part of the spam-filtering...
In this study, the ensemble classifier presented by Caruana, Niculescu-Mizil, Crew & Ksikes (200...
Most of the cyber breaches in the world today are done based on fraudulent activities. Phishers and ...
The annoyance of spam increasingly plagues both individuals and organizations. Spam classification i...
Unsolicited emails, popularly referred to as spam, have remained one of the biggest threats to cyber...
This paper is devoted to multi-tier ensemble classifiers for the detection and filtering of phishing...
In email spam detection, not only different parts and content of emails are important, but also the ...
The problem of concept drift has recently received con-siderable attention in machine learning resea...
Spam has been studied and dealt with extensively in the email, web and, recently, the blog domain. R...
Email is one of the most ubiquitous and pervasive application used on a daily basis by millions of p...
Feature selection is an important issue in data mining, and it is used to reduce dimensions of featu...
The development of data-mining applications such as classification and clustering has shown the need...
Abstract: Email spam or junk e-mail is one of the major problems of the today's usage of Intern...
Feature selection is an important issue in data mining, and it is used to reduce dimensions of featu...
Anti-spam technology is developing rapidly in recent years. With the emerging applications of machin...
The paper elaborates on how text analysis influences classification—a key part of the spam-filtering...
In this study, the ensemble classifier presented by Caruana, Niculescu-Mizil, Crew & Ksikes (200...
Most of the cyber breaches in the world today are done based on fraudulent activities. Phishers and ...
The annoyance of spam increasingly plagues both individuals and organizations. Spam classification i...
Unsolicited emails, popularly referred to as spam, have remained one of the biggest threats to cyber...
This paper is devoted to multi-tier ensemble classifiers for the detection and filtering of phishing...
In email spam detection, not only different parts and content of emails are important, but also the ...
The problem of concept drift has recently received con-siderable attention in machine learning resea...
Spam has been studied and dealt with extensively in the email, web and, recently, the blog domain. R...
Email is one of the most ubiquitous and pervasive application used on a daily basis by millions of p...
Feature selection is an important issue in data mining, and it is used to reduce dimensions of featu...
The development of data-mining applications such as classification and clustering has shown the need...
Abstract: Email spam or junk e-mail is one of the major problems of the today's usage of Intern...
Feature selection is an important issue in data mining, and it is used to reduce dimensions of featu...
Anti-spam technology is developing rapidly in recent years. With the emerging applications of machin...
The paper elaborates on how text analysis influences classification—a key part of the spam-filtering...