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contributor authorCannon, Alex J.
date accessioned2017-06-09T17:01:25Z
date available2017-06-09T17:01:25Z
date copyright2006/02/01
date issued2006
identifier issn0894-8755
identifier otherams-78105.pdf
identifier urihttp://onlinelibrary.yabesh.ir/handle/yetl/4220738
description abstractPrincipal predictor analysis is a multivariate linear technique that fits between regression and canonical correlation analysis in terms of the complexity of its architecture. This study introduces a new neural network approach for performing nonlinear principal predictor analysis (NLPPA). NLPPA is applied to the Lorenz system of equations and is compared with nonlinear canonical correlation analysis (NLCCA) and linear multivariate models. Results suggest that NLPPA is capable of performing better than NLCCA when datasets are corrupted with noise. Also, NLPPA modes may be extracted in less time than NLCCA modes. NLPPA is recommended for prediction problems where a clear set of predictors and a clear set of predictands can be easily defined.
publisherAmerican Meteorological Society
titleNonlinear Principal Predictor Analysis: Application to the Lorenz System
typeJournal Paper
journal volume19
journal issue4
journal titleJournal of Climate
identifier doi10.1175/JCLI3634.1
journal fristpage579
journal lastpage589
treeJournal of Climate:;2006:;volume( 019 ):;issue: 004
contenttypeFulltext


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