This thesis gathers some contributions to statistical pattern recognition particularly targeted at problems in which the feature vectors are high-dimensional. Three pattern recognition scenarios are addressed, namely pattern classification, regression analysis and score fusion. For each of these, an algorithm for learning a statistical model is presented. In order to address the difficulty that is encountered when the feature vectors are high-dimensional, adequate models and objective functions are defined. The strategy of learning simultaneously a dimensionality reduction function and the pattern recognition model parameters is shown to be quite effective, making it possible to learn the model without discarding any discriminative informat...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
This thesis develops flexible and principled nonparametric learning algorithms to explore, understan...
Diplôme : Dr. d'UniversitéThis thesis takes place within the framework of statistical learning. We s...
This thesis gathers some contributions to statistical pattern recognition particularly targeted at p...
This thesis gathers some contributions to statistical pattern recognition particularly targeted at p...
This thesis investigates two important topics in the statistical pattern recognition field, namely d...
This thesis initially overviews the general methodologies and techniques of databased models design ...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Feature selection is an important issue in pattern recognition. The goal of feature selection algori...
There has been a rapid emergence of new pattern recognition/classification techniques in a variety o...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
Extracting knowledge and providing insights into complex mechanisms underlying noisy high-dimensiona...
Datasets used in the thesis "Contributions to High-Dimensional Pattern Recognition" and related publ...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
This thesis develops flexible and principled nonparametric learning algorithms to explore, understan...
Diplôme : Dr. d'UniversitéThis thesis takes place within the framework of statistical learning. We s...
This thesis gathers some contributions to statistical pattern recognition particularly targeted at p...
This thesis gathers some contributions to statistical pattern recognition particularly targeted at p...
This thesis investigates two important topics in the statistical pattern recognition field, namely d...
This thesis initially overviews the general methodologies and techniques of databased models design ...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Feature selection is an important issue in pattern recognition. The goal of feature selection algori...
There has been a rapid emergence of new pattern recognition/classification techniques in a variety o...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
Extracting knowledge and providing insights into complex mechanisms underlying noisy high-dimensiona...
Datasets used in the thesis "Contributions to High-Dimensional Pattern Recognition" and related publ...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
This thesis develops flexible and principled nonparametric learning algorithms to explore, understan...
Diplôme : Dr. d'UniversitéThis thesis takes place within the framework of statistical learning. We s...