Publication | Closed Access
An investigation into the source of power for AIRS, an artificial immune classification system
55
Citations
13
References
2004
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningArtificial Immune SystemImmunologyImmunological ComputingIntelligent SystemsImmune SystemClassification MethodData ScienceData MiningPattern RecognitionAllergyDefense SystemsAutoimmunityIntelligent ClassificationClassification PowerComputer ScienceSystems ImmunologyVaccinationNew ClassifierAirs ClassifierMedicineLearning Classifier System
The AIRS classifier, based on metaphors from the field of artificial immune systems, has shown itself to be an effective general purpose classifier across a broad spectrum of classification problems. This research examines the new classifier empirically, replacing one of the two likely sources of its classification power with alternative modifications. The results are slightly less effective, but not statistically significantly so. We conclude that the modifications, which are computationally somewhat more efficient, provide fast test versions of AIRS for users to experiment with. We also conclude that the chief source of classification power of AIRS must lie in its replacement and maintenance of its memory cell population.
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