We explore the properties of projection pursuit discriminant analysis. This discriminant method is very powerful but relies heavily on a univariate density estimate. We show that the procedure based on wavelets maintains the same rate of convergence as with univariate wavelet density estimation. We also show the Bayes risk strong consistency of both the kernel‐ and wavelet‐based methods. Simulated data and real data concerning character recognition show that the method is effective and robust against the curse of dimensionality. The wavelet alternative seems more likely than the kernel counterpart to find an interesting projection. Wavelets are often criticised for giving too wiggly an estimate and for being too localised to give good globa...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
We study the estimation of the linear discriminant with projection pursuit, a method that is unsuper...
Abstract This paper starts with a short review of previous work on robust discriminant analysis with...
Two projection indices are proposed for the construction of robust 2-sample linear discriminant func...
Linear Discriminant Analysis (LDA) might be the most widely used linear feature extraction method in...
Projection pursuit is a method for nding interesting projections of high-dimensional multivariate da...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
Fisher's linear discriminant (FLD) is one of the most widely used linear feature extraction met...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
We study the estimation of the linear discriminant with projection pursuit, a method that is unsuper...
Abstract This paper starts with a short review of previous work on robust discriminant analysis with...
Two projection indices are proposed for the construction of robust 2-sample linear discriminant func...
Linear Discriminant Analysis (LDA) might be the most widely used linear feature extraction method in...
Projection pursuit is a method for nding interesting projections of high-dimensional multivariate da...
AbstractDiscriminant analysis plays an important role in multivariate statistics as a prediction and...
Let us consider a defined density on a set of very large dimension. It is quite difficult to find an...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
In high-dimensional data, one often seeks a few interesting low-dimensional projections that reveal ...
Fisher's linear discriminant (FLD) is one of the most widely used linear feature extraction met...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Feature extraction is often an important preprocessing step in classifier design, in order to overco...