In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. More specifically, we reformulate the SVM framework such that each training example can be modeled by a multi-dimensional Gaussian distribution described by its mean vector and its covariance matrix -- the latter modeling the uncertainty. We address the classification problem and define a cost function that is the expected value of the classical SVM cost when data samples are drawn from the multi-dimensional Gaussian distributions that form the set of the training examples. Our formulation approximates the classical SVM formulation when the training examples are isotropic Gaussians with variance tending to zero. We arrive at a convex optimizatio...
Uncertainty can exist in any measurement of data describing the real world. Many machine learning ap...
This paper presents a Chance-constraint Programming approach for constructing maximum-margin classif...
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
International audienceWe consider the binary classification problem when data are large and subject ...
International audienceWe consider the binary classification problem when data are large and subject ...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
Uncertainty can exist in any measurement of data describing the real world. Many machine learning ap...
This paper presents a Chance-constraint Programming approach for constructing maximum-margin classif...
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
In this paper, we propose a maximum margin classifier that deals with uncertainty in data input. Mor...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
International audienceThis paper addresses the pattern classification problem arising when available...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
International audienceWe consider the binary classification problem when data are large and subject ...
International audienceWe consider the binary classification problem when data are large and subject ...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
We consider the problem of Gaussian mixture model (GMM)-based classification of noisy data, where th...
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
Uncertainty can exist in any measurement of data describing the real world. Many machine learning ap...
This paper presents a Chance-constraint Programming approach for constructing maximum-margin classif...
Abstract. An important advantage of Gaussian processes is the ability to directly estimate classific...