Singular spectrum analysis (SSA), a linear (univariate and multivariate) time series technique, performs principal component analysis (PCA) on an augmented data set containing the original data and time-lagged copies of the data. Neural network theory has meanwhile allowed PCA to be generalized to nonlinear PCA (NLPCA). In this paper, NLPCA is further extended to perform nonlinear SSA (NLSSA): First, SSA is applied to reduce the dimension of the data set; the leading principal components (PCs) of the SSA then become inputs to an NLPCA network (with a circular node at the bottleneck). This network performs the NLSSA by nonlinearly combining all the input SSA PCs. The NLSSA is applied to the tropical Pacific sea surface temperature anomaly (S...
The tropical Atlantic Ocean exhibits several modes of interannual variability such as the equatorial...
NonLinear Principal Component Analysis (NLPCA) using three-hidden-layer feed-forward neural networks...
A novel methodology is presented for the identification of the mean cycle of the Madden–Julian Oscil...
Singular spectrum analysis (SSA), a linear (univariate and multivariate) time series technique, perf...
Methods in multivariate statistical analysis are essential for working with large amounts of geophys...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
The nonlinear principal component analysis, a neural network technique, is applied to the observed u...
Nonlinear principal component analysis (NLPCA) can be performed by a neural network model which nonl...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
Principal component analysis (PCA) has been generalized to complex principal component analysis (CPC...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Complex principal component analysis (CPCA) is a linear multivariate technique commonly applied to c...
The zonal winds at several levels between 70 and 10 hPa (roughly 20–30 km) measured at near-equatori...
The tropical Atlantic Ocean exhibits several modes of interannual variability such as the equatorial...
NonLinear Principal Component Analysis (NLPCA) using three-hidden-layer feed-forward neural networks...
A novel methodology is presented for the identification of the mean cycle of the Madden–Julian Oscil...
Singular spectrum analysis (SSA), a linear (univariate and multivariate) time series technique, perf...
Methods in multivariate statistical analysis are essential for working with large amounts of geophys...
Recent advances in neural network modeling have led to the nonlinear generalization of classical mul...
The nonlinear principal component analysis, a neural network technique, is applied to the observed u...
Nonlinear principal component analysis (NLPCA) can be performed by a neural network model which nonl...
A nonlinear generalisation of Principal Component Analysis (PCA), denoted Nonlinear Principal Compo...
The nonlinear principal component analysis (NLPCA), via a neural network approach, was applied to th...
Principal component analysis (PCA) has been generalized to complex principal component analysis (CPC...
Nonlinear principal component analysis (NLPCA), via a neural network (NN) approach, was applied to a...
Linear dimensionality reduction techniques, notably principal component analysis, are widely used in...
Complex principal component analysis (CPCA) is a linear multivariate technique commonly applied to c...
The zonal winds at several levels between 70 and 10 hPa (roughly 20–30 km) measured at near-equatori...
The tropical Atlantic Ocean exhibits several modes of interannual variability such as the equatorial...
NonLinear Principal Component Analysis (NLPCA) using three-hidden-layer feed-forward neural networks...
A novel methodology is presented for the identification of the mean cycle of the Madden–Julian Oscil...