02-05-2011, 10:10 AM
A Fuzzy Similarity Approach for Automated Spam Filtering –IEEE –java
Abstract:
E-mail spam has become an epidemic problem that can negatively affect the usability of electronic mail as a communication means. Besides wasting users’ time and effort to scan and delete the massive amount of
junk e-mails received; it consumes network bandwidth and storage space, slows down e-mail servers, and provides a medium to distribute harmful and/or offensive content. Several machine learning approaches have been applied to this problem. In this paper, we explore a new approach based on fuzzy similarity that can automatically classify e-mail messages as spam or legitimate. We study its performance for various conjunction and disjunction
operators for several datasets. The results are promising as compared with a naïve Bayesian classifier. Classification accuracy above 97% and low false positive rates are achieved in many test cases