Abstract
Motivation: Human decisions often proceed in two steps. Initially those most preferred are chosen followed by a subsequent choice of these preferences. Applying one artificial neural network (ANN), a classification is limited to the preselection process. The final categorization is only possible by a subsequent ANN that distinguishes the pre-chosen classes. Existing strategies using coupled ANNs are discussed and a new approach particularly suited for multiclass classification problems is introduced ('Subsequent ANN', SANN). Results: Evaluating a simulated data base comprising 3 classes, classification results of SANN were obviously superior to those achieved by ANN. To evaluate a real-world data base the microarray benchmark GCM (14 classes) was chosen. The ANN results reached 72%, comparable to previous results. Using SANN, up to 81% of the tumors were correctly classified. © Oxford University Press 2004; all rights reserved.
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CITATION STYLE
Linder, R., Dew, D., Sudhoff, H., Theegarten, D., Remberger, K., Pöppl, S. J., & Wagner, M. (2004). The “subsequent artificial neural network” (SANN) approach might bring more classificatory power to ANN-based DNA microarray analyses. Bioinformatics, 20(18), 3544–3552. https://doi.org/10.1093/bioinformatics/bth441
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