Integrating defeasible argumentation with fuzzy ART neural networks for pattern classification
Data(s) |
2004
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Resumo |
Many classification systems rely on clustering techniques in which a collection of training examples is provided as an input, and a number of clusters c1,...cm modelling some concept C results as an output, such that every cluster ci is labelled as positive or negative. Given a new, unlabelled instance enew, the above classification is used to determine to which particular cluster ci this new instance belongs. In such a setting clusters can overlap, and a new unlabelled instance can be assigned to more than one cluster with conflicting labels. In the literature, such a case is usually solved non-deterministically by making a random choice. This paper presents a novel, hybrid approach to solve this situation by combining a neural network for classification along with a defeasible argumentation framework which models preference criteria for performing clustering. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Iberoamerican Science & Technology Education Consortium |
Relação |
Reproducció del document publicat a http://journal.info.unlp.edu.ar/journal/journal10/papers/JCST-Apr04-7.pdf Journal of Computer Science & Technology, 2004, vol. 4, núm. 1, p. 45-51 |
Direitos |
open access (c) Iberoamerican Science & Technology Education Consortium, 2004 |
Palavras-Chave | #Machine learning #Defeasible argumentation #Neural networks #Pattern classification #Xarxes neuronals (Informàtica) |
Tipo |
article |