An Assessment of Case Base Reasoning for Short Text Message Classification

Matt Healy, Sarah Jane Delany, Anton Zamolotskikh

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Message classification is a text classification task that has provoked much interest in machine learning. One aspect of message classification that presents a particular challenge is the classification of short text messages. This paper presents an assessment of applying a case based approach that was developed for long text messages (specifically spam filtering) to short text messages. The evaluation involves determining the most appropriate feature types and feature representation for short text messages and then comparing the performance of the case-based classifier with both a Naıve Bayes classifier and a Support Vector Machine. Our evaluation shows that short text messages require different features and even different classifiers than long text messages. A machine learner which is to classify text messages will require some level of configuration in these aspects.
Original languageEnglish
Title of host publicationProceedings of the 15th Irish Conference on Artificial Intelligence & Cognitive Science (AICS)
DOIs
Publication statusPublished - 2005
Event15th. Irish Conference on Artificial Intelligence and Cognitive Sciences (AICS'04) - Castlebar, Ireland
Duration: 1 Jan 2004 → …

Conference

Conference15th. Irish Conference on Artificial Intelligence and Cognitive Sciences (AICS'04)
Country/TerritoryIreland
CityCastlebar
Period1/01/04 → …

Keywords

  • message classification
  • text classification
  • machine learning
  • short text messages
  • case based approach
  • spam filtering
  • feature types
  • feature representation
  • case-based classifier
  • Naïve Bayes classifier
  • Support Vector Machine
  • machine learner
  • configuration

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