Title of article
Statistical inference in a redesigned Radial Basis Function neural network
Author/Authors
Praga-Alejo، نويسنده , , Rolando J. and Gonzلlez-Gonzلlez، نويسنده , , David S. and Cantْ-Sifuentes، نويسنده , , Mario and Perez-Villanueva، نويسنده , , Pedro and Torres-Treviٌo، نويسنده , , Luis M. and Flores-Hermosillo، نويسنده , , Bernardo D. Martinez، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
11
From page
1881
To page
1891
Abstract
A Hybrid Learning Process method was fitted into a RBF. The resulting redesigned RBF intends to show how to test if the statistical assumptions are fulfilled and to apply statistical inference to the redesigned RBFNN bearing in mind that it allows to determine the relationship between a response (to a process) and one or more independent variables, testing how much each factor contributes to the total variation of the response is also feasible. The results show that statistical methods such as inference, Residual Analysis, and statistical metrics are all good alternatives and excellent methods for validation of the effectiveness of the Neural Network models. The foremost conclusion is that the resulting redesigned Radial Basis Function improved the accuracy of the model after using a Hybrid Learning Process; moreover, the new model also validates the statistical assumptions for using statistical inference and statistical analysis, satisfying the assumptions required for ANOVA to determine the statistical significance and the relationship between variables.
Keywords
Radial basis function , Statistical inference , ANOVA , residual analysis , Hybrid Learning Process
Journal title
Engineering Applications of Artificial Intelligence
Serial Year
2013
Journal title
Engineering Applications of Artificial Intelligence
Record number
2125978
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