Publication | Closed Access
The multilayer perceptron as an approximation to a Bayes optimal discriminant function
838
Citations
7
References
1990
Year
Artificial IntelligenceClassification MethodEngineeringMachine LearningComputational Learning TheoryPattern RecognitionUnit Activation FunctionMultilinear Subspace LearningStatistical InferenceComputer ScienceMultiple ClassesMultilayer PerceptronStatistical Learning TheoryClassifier SystemStatistical Pattern RecognitionStatisticsSupervised LearningBayesian Inference
The multilayer perceptron, when trained as a classifier using backpropagation, is shown to approximate the Bayes optimal discriminant function. The result is demonstrated for both the two-class problem and multiple classes. It is shown that the outputs of the multilayer perceptron approximate the a posteriori probability functions of the classes being trained. The proof applies to any number of layers and any type of unit activation function, linear or nonlinear.
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