Auffarth, B. and Lopez, M. and Cerquides, J. (2008) Hopfield Networks in Relevance and Redundancy Feature Selection Applied to Classification of Biomedical High-Resolution Micro-CT Images. [Book Chapter]
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Abstract
We study filter–based feature selection methods for classification of biomedical images. For feature selection, we use two filters — a relevance filter which measures usefulness of individual features for target prediction, and a redundancy filter, which measures similarity between features. As selection method that combines relevance and redundancy we try out a Hopfield network. We experimentally compare selection methods, running unitary redundancy and relevance filters, against a greedy algorithm with redundancy thresholds [9], the min-redundancy max-relevance integration [8,23,36], and our Hopfield network selection. We conclude that on the whole, Hopfield selection was one of the most successful methods, outperforming min-redundancy max-relevance when more features are selected.
Item Type: | Book Chapter |
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Keywords: | feature selection, image features, pattern classification |
Subjects: | Computer Science > Machine Learning Computer Science > Statistical Models |
ID Code: | 7061 |
Deposited By: | Auffarth, Benjamin |
Deposited On: | 18 Oct 2010 11:03 |
Last Modified: | 11 Mar 2011 08:57 |
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