Title :
Classifier Fusion Approaches for Diagnostic Cancer Models
Author :
Dimou, Ioannis N. ; Manikis, Georgios C. ; Zervakis, Michalis E.
Author_Institution :
Tech. Crete Univ.
fDate :
Aug. 30 2006-Sept. 3 2006
Abstract :
Classifier ensembles have produced promising results, improving accuracy, confidence and most importantly feature space coverage in many practical applications. The recent trend is to move from heuristic combinations of classifiers to more statistically sound integrated schemes to produce quantifiable results as far as error bounds and overall generalization capability are concerned. In this study, we are evaluating the use of an ensemble of 8 classifiers based on 15 different fusion strategies on two medical problems. We measure the base classifiers correlation using 11 commonly accepted metrics and provide the grounds for choosing an improved hyper-classifier
Keywords :
Bayes methods; cancer; heuristic programming; medical diagnostic computing; pattern classification; probability; radial basis function networks; support vector machines; tumours; Bayes classifier; Fisher discriminant function; SVM; classifier ensembles; classifier fusion approaches; classifiers correlation; diagnostic cancer models; error bounds; fusion strategies; generalization capability; heuristic combination; hyper-classifier; linear distance classifier; medical problems; probabilistic neural net; quadratic distance classifier; radial basis neural network mapping; statistically sound integrated schemes; Bayesian methods; Cancer; Cities and towns; Data mining; Diversity reception; Probability; Statistics; Taxonomy; USA Councils; Voting; SVMs; classifier ensembles; classifier fusion; diagnostic model; hyper-classifiers;
Conference_Titel :
Engineering in Medicine and Biology Society, 2006. EMBS '06. 28th Annual International Conference of the IEEE
Conference_Location :
New York, NY
Print_ISBN :
1-4244-0032-5
Electronic_ISBN :
1557-170X
DOI :
10.1109/IEMBS.2006.260778