Title
Supervised learning on a fuzzy Petri net
Abstract
Feed-forward neural networks used for pattern classification generally have one input layer, one output layer and several hidden layers. The hidden layers in these networks add extra non-linearity for realization of precise functional mapping between the input and the output layers, but semantic relations of the hidden layers with their predecessor and successor layers cannot be justified. This paper presents a novel scheme for supervised learning on a fuzzy Petri net that provides semantic justification of the hidden layers, and is capable of approximate reasoning and learning from noisy training instances. An algorithm for training a feed-forward fuzzy Petri net and an analysis of its convergence have been presented in the paper. The paper also examines the scope of the learning algorithm in object recognition from 2D geometric views.
Year
DOI
Venue
2005
10.1016/j.ins.2004.05.008
Inf. Sci.
Keywords
Field
DocType
approximate reasoning,feed-forward neural network,hidden layer,semantic justification,successor layer,supervised learning,input layer,output layer,noisy training instance,semantic relation,feed forward neural network,petri net,feed forward,object recognition
Convergence (routing),Successor cardinal,Computer science,Fuzzy petri nets,Supervised learning,Functional mapping,Approximate reasoning,Artificial intelligence,Artificial neural network,Machine learning,Cognitive neuroscience of visual object recognition
Journal
Volume
Issue
ISSN
172
3-4
0020-0255
Citations 
PageRank 
References 
15
0.79
14
Authors
3
Name
Order
Citations
PageRank
Amit Konar11859140.38
Uday K. Chakraborty287344.61
Paul P. Wang3150.79