Title
Hidden neuron pruning of multilayer perceptrons using a quantified sensitivity measure
Abstract
In the design of neural networks, how to choose the proper size of a network for a given task is an important and practical problem. One popular approach to tackling this problem is to start with an oversized network and then prune it to a smaller size so as to achieve less computational complexity and better performance in generalization. This paper presents a pruning technique, by means of a quantified sensitivity measure, to remove as many neurons as possible, those with the least relevance, from the hidden layer of a multilayer perceptron (MLP). The sensitivity of an individual neuron is defined as the expectation of its output deviation due to expected input deviation with respect to overall inputs from a continuous interval, and the relevance of the neuron is defined as the multiplication of its sensitivity value by the summation of the absolute values of its outgoing weights. The basic idea for introducing such a relevance measure is that a neuron with less relevance ought to have less effect on its succeeding neurons and thus contribute less to the entire network. The pruning is performed by iteratively training a network to a certain performance criterion and then removing the hidden neuron with the lowest relevance value until no one can further be removed. The pruning technique is novel in its quantified sensitivity measure and so is its relevance measure. Experimental results demonstrate the effectiveness of the pruning technique.
Year
DOI
Venue
2006
10.1016/j.neucom.2005.04.010
Neurocomputing
Keywords
Field
DocType
multilayer perceptrons,pruning technique,neural network,hidden neuron pruning,sensitivity value,hidden neuron,sensitivity measure,oversized network,lowest relevance value,relevance measure,entire network,individual neuron,multilayer perceptron,computational complexity
Pattern recognition,Computer science,Absolute value,Multiplication,Multilayer perceptron,Hidden neuron,Artificial intelligence,Artificial neural network,Perceptron,Machine learning,Pruning,Computational complexity theory
Journal
Volume
Issue
ISSN
69
7-9
Neurocomputing
Citations 
PageRank 
References 
36
1.42
16
Authors
2
Name
Order
Citations
PageRank
Xiaoqin Zeng140732.97
Daniel S. Yeung2112692.97