Dimensionality reduction methods play a big role within the modern machine learning techniques, and subspace learning is one of the common approaches to it. Although various methods have been proposed over the past years, many of them suffer from limitations related to the unimodality assumptions on the data and low speed in the cases of high-dimensional data (in linear formulations) or large datasets (in kernel-based formulations). In this work, several methods for overcoming these limitations are proposed. In this thesis, the problem of the large-scale multi-modal data analysis for single- and multi-view data is discussed, and several extensions for Subclass Discriminant Analysis (SDA) are proposed. First, a Spectral Regression Subclass D...
The problem of learning from both labeled and unlabeled data is considered. In this paper, we presen...
We study the use of kernel subspace methods that learn low-dimensional subspace representations for ...
Abstract: Feature extraction and dimensionality reduction are impor-tant tasks in many fields of sci...
Dimensionality reduction methods play a big role within the modern machine learning techniques, and ...
Highlights • We present a speed-up extension to Subclass Discriminant Analysis. • We propose a...
In this paper, we propose a speed-up approach for subclass discriminant analysis and formulate a nov...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Linear discriminant analysis (LDA) has been an active topic of research during the last century. How...
In this paper, the problem of multi-view embed-ding from different visual cues and modalities is con...
Abstract. This paper presents the multi-subspace discovery problem and provides a theoretical soluti...
Linear discriminant analysis (LDA) has been an active topic of research during the last century. How...
Subspace learning approaches aim to discover important statistical distribution on lower dimensions ...
Subspace methods such as Linear Discriminant Analysis (LDA) are efficient in dimension reduction and...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
The problem of learning from both labeled and unlabeled data is considered. In this paper, we presen...
We study the use of kernel subspace methods that learn low-dimensional subspace representations for ...
Abstract: Feature extraction and dimensionality reduction are impor-tant tasks in many fields of sci...
Dimensionality reduction methods play a big role within the modern machine learning techniques, and ...
Highlights • We present a speed-up extension to Subclass Discriminant Analysis. • We propose a...
In this paper, we propose a speed-up approach for subclass discriminant analysis and formulate a nov...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Linear discriminant analysis (LDA) has been an active topic of research during the last century. How...
In this paper, the problem of multi-view embed-ding from different visual cues and modalities is con...
Abstract. This paper presents the multi-subspace discovery problem and provides a theoretical soluti...
Linear discriminant analysis (LDA) has been an active topic of research during the last century. How...
Subspace learning approaches aim to discover important statistical distribution on lower dimensions ...
Subspace methods such as Linear Discriminant Analysis (LDA) are efficient in dimension reduction and...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
The problem of learning from both labeled and unlabeled data is considered. In this paper, we presen...
We study the use of kernel subspace methods that learn low-dimensional subspace representations for ...
Abstract: Feature extraction and dimensionality reduction are impor-tant tasks in many fields of sci...