DocumentCode :
352496
Title :
On the problem in model selection of neural network regression in overrealizable scenario
Author :
Agiwara, Katsuyukhi ; Kuno, K. ; Sui, Shirou
Author_Institution :
Fac. of Phys., Mie Univ., Tsu, Japan
Volume :
6
fYear :
2000
fDate :
2000
Firstpage :
461
Abstract :
In this article, we analyze the expected training error and the expected generalization error in a special case of overrealizable scenario, in which output data is a Gaussian noise sequence. Firstly, we derived the upper bound of the expected training error of a network, which is independent of input probability distributions. Secondly, based on the first result, we derived the lower bound for the expected generalization error of a network, provided that the inputs are not stochastic. From the first result, it is clear that we should evaluate the degree of overfitting of a network to noise component in data more larger than the evaluation in NIC. From the second result, the expected generalization error, which is directly associated with the model selection criterion, is larger than in NIC. These results suggest that the model selection criterion in overrealizable scenario will be larger than NIC if inputs are not stochastic. Additionally, the results of numerical experiments agree with our theoretical results
Keywords :
generalisation (artificial intelligence); learning (artificial intelligence); neural nets; Gaussian noise sequence; generalization error; model selection criterion; neural network regression; training error; upper bound; Computer networks; Data engineering; Error correction; Intelligent networks; Least squares approximation; Maximum likelihood estimation; Neural networks; Physics; Radial basis function networks; Shape;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 2000. IJCNN 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on
Conference_Location :
Como
ISSN :
1098-7576
Print_ISBN :
0-7695-0619-4
Type :
conf
DOI :
10.1109/IJCNN.2000.859438
Filename :
859438
Link To Document :
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