Linear dimensionality reduction techniques, notably principal component analysis, are widely used in climate data analysis as a means to aid in the interpretation of datasets of high dimensionality. These linear methods may not be appropriate for the analysis of data arising from nonlinear processes occurring in the climate system. Numerous techniques for nonlinear dimensionality reduction have been developed recently that may provide a potentially useful tool for the identification of low-dimensional manifolds in climate data sets arising from nonlinear dynamics. In this thesis I apply three such techniques to the study of El Nino/Southern Oscillation variability in tropical Pacific sea surface temperatures and thermocline depth, comparing...
The nonlinear principal component analysis, a neural network technique, is applied to the observed u...
Isometric feature mapping (ISOMAP) is a nonlinear dimensionality reduction method used for extractin...
Principal component analysis (PCA) has been generalized to complex principal component analysis (CPC...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
International audienceLinear dimensionality reduction techniques, notably principal component analys...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
International audienceLinear methods of dimensionality reduction are useful tools for handling and i...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Singular spectrum analysis (SSA), a linear (univariate and multivariate) time series technique, perf...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
The tropical Atlantic Ocean exhibits several modes of interannual variability such as the equatorial...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
The nonlinear principal component analysis, a neural network technique, is applied to the observed u...
Isometric feature mapping (ISOMAP) is a nonlinear dimensionality reduction method used for extractin...
Principal component analysis (PCA) has been generalized to complex principal component analysis (CPC...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
International audienceLinear dimensionality reduction techniques, notably principal component analys...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
International audienceLinear methods of dimensionality reduction are useful tools for handling and i...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Singular spectrum analysis (SSA), a linear (univariate and multivariate) time series technique, perf...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
The tropical Atlantic Ocean exhibits several modes of interannual variability such as the equatorial...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
The nonlinear principal component analysis, a neural network technique, is applied to the observed u...
Isometric feature mapping (ISOMAP) is a nonlinear dimensionality reduction method used for extractin...
Principal component analysis (PCA) has been generalized to complex principal component analysis (CPC...