Title :
Multi-class Minimax Probability Machine
Author :
Dang, Tat-Dat ; Nguyen, Ha-Nam
Author_Institution :
Hanoi Universty of Sci., Hanoi, Vietnam
Abstract :
This paper investigates the multi-class minimax probability machine (MPM). MPM constructs a binary classifier that provides a worst-case bound on the probability of misclassification of future data points, based on reliable estimates of means and covariance matrices of the classes from the training data points. We propose a method to adapt MPM to multi-class datasets using the one-against-all strategy. And then we introduce an optimal kernel for MPM for each specific dataset found by genetic algorithms (GA). The proposed method was evaluated on stomach cancer data. The obtained results are better and more stable than for using a single kernel.
Keywords :
cancer; covariance matrices; data handling; genetic algorithms; medical diagnostic computing; minimax techniques; probability; binary classifier; covariance matrices; genetic algorithms; misclassification; multiclass minimax probability machine; one-against-all strategy; stomach cancer data; training data points; Backpropagation algorithms; Cancer; Covariance matrix; Genetic algorithms; Kernel; Knowledge engineering; Minimax techniques; Probability; Systems engineering and theory; Training data; Genetic Algorithms; Minimax Probability Machine; One-against-all; One-against-one;
Conference_Titel :
Knowledge and Systems Engineering, 2009. KSE '09. International Conference on
Conference_Location :
Hanoi
Print_ISBN :
978-1-4244-5086-2
Electronic_ISBN :
978-0-7695-3846-4
DOI :
10.1109/KSE.2009.46