International audienceLinear methods of dimensionality reduction are useful tools for handling and interpreting high dimensional data. However, the cumulative variance explained by each of the subspaces in which the data space is decomposed may show a slow convergence that makes the selection of a proper minimum number of subspaces for successfully representing the variability of the process ambiguous. The use of nonlinear methods can improve the embedding of multivariate data into lower dimensional manifolds. In this article, a nonlinear method for dimensionality reduction, Isomap, is applied to the sea surface temperature and thermocline data in the tropical Pacific Ocean, where the El Niño-Southern Oscillation (ENSO) phenomenon and the a...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...
International audienceLinear dimensionality reduction techniques, notably principal component analys...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
University of Minnesota M.S. thesis.October 2015. Major: Computer Science. Advisor: Vipin Kumar. 1 ...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
Numerous statistical and dynamical models have been developed in recent years to forecast ENSO event...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
We propose a data-driven framework to simplify the description of spatiotemporal climate variability...
International audienceThis paper presents a statistical diagnostic to interpret the dynamics of nonl...
We give a simple description of the blessing of dimensionality with the main focus on the concentrat...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
We are grateful to Michael Ghil and Dmitri Kondrashov for fruitful discussions. The study was suppor...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...
International audienceLinear dimensionality reduction techniques, notably principal component analys...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
University of Minnesota M.S. thesis.October 2015. Major: Computer Science. Advisor: Vipin Kumar. 1 ...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
Numerous statistical and dynamical models have been developed in recent years to forecast ENSO event...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
We propose a data-driven framework to simplify the description of spatiotemporal climate variability...
International audienceThis paper presents a statistical diagnostic to interpret the dynamics of nonl...
We give a simple description of the blessing of dimensionality with the main focus on the concentrat...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
We are grateful to Michael Ghil and Dmitri Kondrashov for fruitful discussions. The study was suppor...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
This repository contains the Juypter Notebooks and python files to reproduce the main results of the...