Title
Some Applications of Functional Networks in Statistics and Engineering
Abstract
Functional networks are a general framework useful for solving a wide range of problems in probability, statistics, and engineering applications. In this article, we demonstrate that functional networks can be used for many general purposes including (a) solving nonlinear regression problems without the rather strong assumption of a known functional form, (b) modeling chaotic time series data, (c) finding conjugate families of distribution Functions needed for the applications of Bayesian statistical techniques, (d) analyzing the problem of stability with respect to maxima operations, which are useful in the theory and applications of extreme values, and (e) modeling the reproductivity and associativity laws that have many applications in applied probability. We also give two specific engineering applications-analyzing the Ikeda map with parameters leading to chaotic behavior and modeling beam stress subject to a,given load. The main purpose of this article is to introduce functional networks and to show their power and usefulness in engineering and statistical applications. We describe the steps involved in working with functional networks including structural learning (specification and simplification of the initial topology), parametric learning, and model-selection procedures. The concepts and methodologies are illustrated using several examples of applications.
Year
DOI
Venue
2001
10.1198/00401700152404282
TECHNOMETRICS
Keywords
Field
DocType
alternate conditioning expectation (ACE),bayesian statistics,beam example,conjugate distributions,functional equations,generalized additive models (GAM),maximum stability,minimum description length measure (MDL),multivariate adaptive regression spline (MARS),neural networks,reproductive distributions,stable families
Econometrics,Ikeda map,Mathematical optimization,Applied probability,Extreme value theory,Bayesian statistics,Artificial neural network,Statistics,Chaotic,Functional equation,Mathematics,Bayesian probability
Journal
Volume
Issue
ISSN
43
1
0040-1706
Citations 
PageRank 
References 
25
2.03
5
Authors
4
Name
Order
Citations
PageRank
Enrique Castillo155559.86
José Manuel Gutiérrez218120.82
Ali S. Hadi314015.04
Beatriz Lacruz4616.80