Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

On R2 contribution and statistical inference of the change in the hidden and input units of the statistical neural networks

Determining the number of liitltlen units for obtaining optimal network performance has been a concern over the years ilespite empirical results showing that with higher neurons, the netivork error is retlucetl. This has led to indiscrimate increase in the hidden neurons, thereby bringing about over...

Full description

Saved in:
Bibliographic Details
Format: Article
Published: 2012-11
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!

MARC

LEADER 00000njm a2000000a 4500
001 oai:repository.ui.edu.ng:123456789/5330
042 |a dc 
720 |a Udomboso, C. G.  |e author 
720 |a James, T. O.  |e author 
720 |a Odim, M. O.  |e author 
260 |c 2012-11 
520 |a Determining the number of liitltlen units for obtaining optimal network performance has been a concern over the years ilespite empirical results showing that with higher neurons, the netivork error is retlucetl. This has led to indiscrimate increase in the hidden neurons, thereby bringing about overfitting. On the other hand, using too few hidden neurons leads to error bias, which can make neural network statistically unfit. In this paper, we developed a model for R1 for investigating changes in hidden and input units, as well as developed tests that can be used in determining the number of hidden and input units to obtain optimal performance. The result of the analyses shows that there is effect on the network model when there is an increase in the number of hidden neurons, as well as the number of input units. 
024 8 |a 1116-4336 
024 8 |a ui_art_udomboso_on_2012 
024 8 |a Journal of the Nigeria Association of Mathematical Physics 22, pp. 335-340 
024 8 |a http://ir.library.ui.edu.ng/handle/123456789/5330 
653 |a Hidden Unit 
653 |a Input Unit 
653 |a R2 change 
653 |a F test 
245 0 0 |a On R2 contribution and statistical inference of the change in the hidden and input units of the statistical neural networks