Title: THE CLASSIFICATION CAPABILITY OF A DYNAMIC THRESHOLD NEURAL-NETWORK
Authors: CHIANG, CC
FU, HC
資訊工程學系
Department of Computer Science
Issue Date: 1-Apr-1994
Abstract: This paper proposes a new type of neural network called the Dynamic Threshold Neural Network (DTNN). Through theoretical analysis, we prove that the classification capability of a DTNN can be twice as effective as a conventional sigmoidal multilayer neural network in classification capability. In other words, to successfully learn an arbitrarily given training set, a DTNN may need as little as half the number of free parameters required by a sigmoidal multilayer neural network.
URI: http://hdl.handle.net/11536/2571
ISSN: 0167-8655
Journal: PATTERN RECOGNITION LETTERS
Volume: 15
Issue: 4
Begin Page: 409
End Page: 418
Appears in Collections:Articles