International audienceRobust variants of nonlinear canonical correlation analysis (NLCCA) are introduced to improve performance on datasets with low signal-to-noise ratios, for example those encountered when making seasonal climate forecasts. The neural network model architecture of standard NLCCA is kept intact, but the cost functions used to set the model parameters are replaced with more robust variants. The Pearson product-moment correlation in the double-barreled network is replaced by the biweight midcorrelation, and the mean squared error (mse) in the inverse mapping networks can be replaced by the mean absolute error (mae). Robust variants of NLCCA are demonstrated on a synthetic dataset and are used to forecast sea surface tempera...
The skill of global-scale sea surface temperature forecasts using a statistically based linear forec...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
International audienceWe investigated the usability of the method of local linear models (LLM), mult...
Robust variants of nonlinear canonical correlation analysis (NLCCA) are introduced to improve perfor...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
This dissertation develops multivariate statistical models for seasonal forecasting and downscaling ...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
The skill of global-scale sea surface temperature forecasts using a statistically based linear forec...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
International audienceWe investigated the usability of the method of local linear models (LLM), mult...
Robust variants of nonlinear canonical correlation analysis (NLCCA) are introduced to improve perfor...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
This dissertation develops multivariate statistical models for seasonal forecasting and downscaling ...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Empirical or statistical methods have been introduced into meteorology and oceanography in four dist...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
The skill of global-scale sea surface temperature forecasts using a statistically based linear forec...
[1] Methods in multivariate statistical analysis are essential for working with large amounts of geo...
International audienceWe investigated the usability of the method of local linear models (LLM), mult...