Factor analysis and discriminant analysis are often used as complementary approaches to identify linear components in two dimensional data arrays. For three dimensional arrays, which may organize data in dimensions such as space, time, and trials, the opportunity arises to combine these two approaches. A new method, Bilinear Discriminant Component Analysis (BDCA), is derived and demonstrated in the context of functional brain imaging data for which it seems ideally suited. The work suggests to identify a subspace projection which optimally separates classes while ensuring that each dimension in this space captures an independent contribution to the discrimination
Mid-level processes on images often return outputs in functional form. In this context the use of f...
This paper considers a fast and effective algorithm for conducting functional principle component an...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...
ii In this Master’s Thesis, we introduce the methodology Basis-Decomposition Discriminant ICA (BD-DI...
The linear discriminant analysis (LDA) method is a classical and commonly utilized technique for dim...
grantor: University of TorontoWe extend a classical multivariate technique: Linear Discrim...
Abstract—Multiple discriminant analysis (MDA) is a general-ization of the Fisher discriminant analys...
We present a new discriminant analysis (DA) method called Multiple Subject Barycentric Discriminant ...
Alzheimer's disease (AD) is a type of dementia which is difficult to diagnose based on clinical obse...
In this paper, we introduce a method for estimating the statistically distinct neural responses in a...
A new method is explored to study schizophrenia using Diffusion Tensor Imaging (DTI). Both Linear Di...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
We propose a novel linear discriminant analysis (LDA) approach for the classification of high-dimens...
Discriminant analysis (DA) is a descriptive multivariate technique for analyzing grouped data, i.e. ...
Principal Components Analysis (PCA) and Linear Discriminant Analysis (LDA) are the two popular techn...
Mid-level processes on images often return outputs in functional form. In this context the use of f...
This paper considers a fast and effective algorithm for conducting functional principle component an...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...
ii In this Master’s Thesis, we introduce the methodology Basis-Decomposition Discriminant ICA (BD-DI...
The linear discriminant analysis (LDA) method is a classical and commonly utilized technique for dim...
grantor: University of TorontoWe extend a classical multivariate technique: Linear Discrim...
Abstract—Multiple discriminant analysis (MDA) is a general-ization of the Fisher discriminant analys...
We present a new discriminant analysis (DA) method called Multiple Subject Barycentric Discriminant ...
Alzheimer's disease (AD) is a type of dementia which is difficult to diagnose based on clinical obse...
In this paper, we introduce a method for estimating the statistically distinct neural responses in a...
A new method is explored to study schizophrenia using Diffusion Tensor Imaging (DTI). Both Linear Di...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
We propose a novel linear discriminant analysis (LDA) approach for the classification of high-dimens...
Discriminant analysis (DA) is a descriptive multivariate technique for analyzing grouped data, i.e. ...
Principal Components Analysis (PCA) and Linear Discriminant Analysis (LDA) are the two popular techn...
Mid-level processes on images often return outputs in functional form. In this context the use of f...
This paper considers a fast and effective algorithm for conducting functional principle component an...
Mid-level processes on images often return outputs in functional form. In this context the use of fu...