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EWCBR
2004
Springer

An Analysis of Case-Base Editing in a Spam Filtering System

14 years 5 months ago
An Analysis of Case-Base Editing in a Spam Filtering System
Because of the volume of spam email and its evolving nature, any deployed Machine Learning-based spam filtering system will need to have procedures for case-base maintenance. Key to this will be procedures to edit the case-base to remove noise and eliminate redundancy. In this paper we present a two stage process to do this. We present a new noise reduction algorithm called Blame-Based Noise Reduction that removes cases that are observed to cause misclassification. We also present an algorithm called Conservative Redundancy Reduction that is much less aggressive than the state-of-the-art alternatives and has significantly better generalisation performance in this domain. These new techniques are evaluated against the alternatives in the literature on four datasets of 1000 emails each (50% spam and 50% non spam).
Sarah Jane Delany, Padraig Cunningham
Added 01 Jul 2010
Updated 01 Jul 2010
Type Conference
Year 2004
Where EWCBR
Authors Sarah Jane Delany, Padraig Cunningham
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