We propose a probabilistic enhancement of standard kernel Support Vector Machines for binary classification, in order to address the case when, along with given data sets, a description of uncertainty (e.g., error bounds) may be available on each datum. In the present paper, we specifically consider Gaussian distributions to model uncertainty. Thereby, our data consist of pairs $(x_i,\Sigma_i)$, $i\in\{1,\ldots,N\}$, along with an indicator $y_i\in\{-1,1\}$ to declare membership in one of two categories for each pair. These pairs may be viewed to represent the mean and covariance, respectively, of random vectors $\xi_i$ taking values in a suitable linear space (typically $\mathbb R^n$). Thus, our setting may also be viewed as a modification...
Support Vector Machines (SVM) is one of the most widely used technique in machines leaning. After th...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Probabilistic topic models have become a standard in modern machine learning to deal with a wide ran...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
This work shows how to estimate the support of the distribution of some data when observations in th...
Uncertainty can exist in any measurement of data describing the real world. Many machine learning ap...
We study the problem of uncertainty in the entries of the Kernel matrix, arising in SVM formulation....
This paper shows that kernel-based estimates of unknown input-output maps can be complemented with u...
International audienceWe consider the binary classification problem when data are large and subject ...
Kernel-based methods first appeared in the form of support vector machines. Since the first Support ...
—We address the problem of learning a data description model for a dataset whose elements or observa...
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
International audienceThe issue of large scale binary classification when data is subject to random ...
Classification models usually associate one class for each new instance. This kind of prediction doe...
International audienceThis paper addresses the pattern classification problem arising when available...
Support Vector Machines (SVM) is one of the most widely used technique in machines leaning. After th...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Probabilistic topic models have become a standard in modern machine learning to deal with a wide ran...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
This work shows how to estimate the support of the distribution of some data when observations in th...
Uncertainty can exist in any measurement of data describing the real world. Many machine learning ap...
We study the problem of uncertainty in the entries of the Kernel matrix, arising in SVM formulation....
This paper shows that kernel-based estimates of unknown input-output maps can be complemented with u...
International audienceWe consider the binary classification problem when data are large and subject ...
Kernel-based methods first appeared in the form of support vector machines. Since the first Support ...
—We address the problem of learning a data description model for a dataset whose elements or observa...
This paper investigates a new learning model in which the input data is corrupted with noise. We pre...
International audienceThe issue of large scale binary classification when data is subject to random ...
Classification models usually associate one class for each new instance. This kind of prediction doe...
International audienceThis paper addresses the pattern classification problem arising when available...
Support Vector Machines (SVM) is one of the most widely used technique in machines leaning. After th...
Embeddings of probability measures into reproducing kernel Hilbert spaces have been proposed as a st...
Probabilistic topic models have become a standard in modern machine learning to deal with a wide ran...