We compared the application of different algorithms to document clustering. The algorithms studied were Fuzzy C-Means, Fuzzy ART, Fuzzy ART for Fuzzy Clusters, Fuzzy Max-Min, and the Kohonen neural network (only the first is not a neural network). We generated a testbed from LISA, using some of the descriptors corresponding to the different records for the comparison of the results. The best results were found with Kohonen's algorithm which also organizes the clusters topologically. We end by discussing in more detail the possibilities offered by Kohonen's algorithm.
%0 Journal Article
%1 guerrero-bote_comparison_2003
%A Guerrero-Bote, Vicente P
%A Lopez-Pujalte, Cristina
%A de Moya-Anegon, Felix
%A Herrero-Solana, Victor
%D 2003
%J International Journal of Approximate Reasoning
%K Adaptive clustering,Kohonen networks networks,Document neural resonance theory,Artificial
%P 287-305
%T Comparison of neural models for document clustering
%U http://www.sciencedirect.com/science/article/B6V07-49FXMP8-2/2/08466f0e952798966e489fdd78771948
%V 34
%X We compared the application of different algorithms to document clustering. The algorithms studied were Fuzzy C-Means, Fuzzy ART, Fuzzy ART for Fuzzy Clusters, Fuzzy Max-Min, and the Kohonen neural network (only the first is not a neural network). We generated a testbed from LISA, using some of the descriptors corresponding to the different records for the comparison of the results. The best results were found with Kohonen's algorithm which also organizes the clusters topologically. We end by discussing in more detail the possibilities offered by Kohonen's algorithm.
@article{guerrero-bote_comparison_2003,
abstract = {We compared the application of different algorithms to document clustering. The algorithms studied were Fuzzy C-Means, Fuzzy ART, Fuzzy ART for Fuzzy Clusters, Fuzzy Max-Min, and the Kohonen neural network (only the first is not a neural network). We generated a testbed from LISA, using some of the descriptors corresponding to the different records for the comparison of the results. The best results were found with Kohonen's algorithm which also organizes the clusters topologically. We end by discussing in more detail the possibilities offered by Kohonen's algorithm.},
added-at = {2007-12-03T17:48:07.000+0100},
author = {Guerrero-Bote, Vicente P and Lopez-Pujalte, Cristina and de Moya-Anegon, Felix and Herrero-Solana, Victor},
biburl = {https://www.bibsonomy.org/bibtex/23702ab4f6c1452b726a63814ce2dfbd4/sercarfe},
interhash = {48c5e11c1eea5bba31e66e2310fca2cf},
intrahash = {3702ab4f6c1452b726a63814ce2dfbd4},
journal = {International Journal of Approximate Reasoning},
keywords = {Adaptive clustering,Kohonen networks networks,Document neural resonance theory,Artificial},
pages = {287-305},
timestamp = {2007-12-03T17:48:10.000+0100},
title = {Comparison of neural models for document clustering},
url = {http://www.sciencedirect.com/science/article/B6V07-49FXMP8-2/2/08466f0e952798966e489fdd78771948 },
volume = 34,
year = 2003
}