It is well known that Unsolicited Commercial Emails (UCE), commonly known as spam, are a serious problem for email accounts of single users, small companies and large institutions. The aim of our research is to define a methodology and to design an architecture in order to overcome some problems that are still boarded on the state-of-art spam-filters. The approach takes into account the semantic richness of natural languages and the spam evolution such as the use of image spam. We finally propose an experimental planning and a comparison with respect to existing tools.

An anti-spam architecture combining visual and semantic features

Gargiulo Francesco;
2008

Abstract

It is well known that Unsolicited Commercial Emails (UCE), commonly known as spam, are a serious problem for email accounts of single users, small companies and large institutions. The aim of our research is to define a methodology and to design an architecture in order to overcome some problems that are still boarded on the state-of-art spam-filters. The approach takes into account the semantic richness of natural languages and the spam evolution such as the use of image spam. We finally propose an experimental planning and a comparison with respect to existing tools.
2008
9789898111418
Spam
Classifiers ensemble
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/321790
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