We present a novel probabilistic latent variable model to perform linear dimensionality reduction on data sets which contain clusters. We prove that the maximum likelihood solution of the model is an unsupervised generalisation of linear discriminant analysis. This provides a completely new approach to one of the most established and widely used classification algorithms. The performance of the model is then demonstrated on a number of real and artificial data sets
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
Due to digitization, a huge volume of data is being generated across several sectors such as healthc...
Information explosion has occurred in most of the sciences and researches due to advances in data co...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
The aim of dimensionality reduction is to reduce the number of considered variables without removing...
Dimensionality reduction techniques are used to reduce the complexity for analysis of high dimension...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We present an algorithm for the reduction of dimensionality useful in statistical classification pro...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
Clustering is one of the most widely used statistical tools for data analysis. Among all existing cl...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
Due to digitization, a huge volume of data is being generated across several sectors such as healthc...
Information explosion has occurred in most of the sciences and researches due to advances in data co...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
The aim of dimensionality reduction is to reduce the number of considered variables without removing...
Dimensionality reduction techniques are used to reduce the complexity for analysis of high dimension...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We propose a novel dimensionality reduction approach based on the gradient of the regression functio...
We present an algorithm for the reduction of dimensionality useful in statistical classification pro...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
VARCLUST algorithm is proposed for clustering variables under the assumption that variables in a giv...
Clustering is one of the most widely used statistical tools for data analysis. Among all existing cl...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
Due to digitization, a huge volume of data is being generated across several sectors such as healthc...