This paper investigates a new learning model in which the input data is corrupted with noise. We present a general statistical framework to tackle this problem. Based on the statistical reasoning, we propose a novel formulation of support vector classification, which allows uncertainty in input data. We derive an intuitive geometric interpretation of the proposed formulation, and develop algorithms to efficiently solve it. Empirical results are included to show that the newly formed method is superior to the standard SVM for problems with noisy input.
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...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
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...
International audienceThe issue of large scale binary classification when data is subject to random ...
International audienceThe issue of large scale binary classification when data is subject to random ...
Support Vector Machines (SVM) is one of the most widely used technique in machines leaning. After th...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
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...
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 ...
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...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
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...
International audienceThe issue of large scale binary classification when data is subject to random ...
International audienceThe issue of large scale binary classification when data is subject to random ...
Support Vector Machines (SVM) is one of the most widely used technique in machines leaning. After th...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
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...
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 ...
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...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...