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  • Επιστημονικές Δημοσιεύσεις Μελών ΠΘ (ΕΔΠΘ)
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Skin lesion diagnosis from images using novel ensemble classification techniques

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Auteur
Maragoudakis, M.; Maglogiannis, I.
Date
2010
DOI
10.1109/ITAB.2010.5687620
Sujet
Classification algorithm
Classification performance
Curse of dimensionality
Ensemble classification
Error rate
Feature reduction
Feature selection
High-dimensional
Imbalanced dataset
Markov Blankets
Random forest algorithm
Random forests
Skin cancers
Skin lesion
Skin lesion images
Algorithms
Decision trees
Feature extraction
Information technology
Dermatology
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Résumé
Reduction of the error rate of melanoma diagnosis, a critical and very dangerous skin cancer that could be treated when early detected, is of major importance. Towards this direction, the present paper presents a novel ensemble classification technique, combining traditional Random Forests with the 'Markov Blanket' notion. The proposed algorithm performs an inherent feature selection phase where only truly informative features are carried forward, thus alleviating the curse of dimensionality and augmenting classification performance. It has been evaluated in a high-dimensional and imbalanced dataset of 1041 skin lesion images, which been preprocessed using the ABCD-rule of dermatology. The proposed ensemble classification technique exhibited a higher classification performance in comparison with the classical Random Forest algorithms, as well as other widely-used classification algorithms where standard feature reduction techniques, such as PCA and SVD, have been applied. © 2010 IEEE.
URI
http://hdl.handle.net/11615/30684
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