In this paper we present a comprehensive Maximum Entropy (MaxEnt) procedure for the classification tasks. This MaxEnt is applied successfully to the problem of estimating the probability distribution function (pdf) of a class with a specific pattern, which is viewed as a probabilistic model handling the classification task. We propose an efficient algorithm allowing to construct a non-linear discriminating surfaces using the MaxEnt procedure. The experiments that we carried out shows the performance and the various advantages of our approach
Maximum entropy approach to classification is very well studied in applied statistics and machine le...
We present a general framework for discriminative estimation based on the maximum entropy principl...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Abstract. In this paper, we propose a Robust Discriminant Analysis based on maximum entropy (MaxEnt)...
Abstract. The principle of maximum entropy is a powerful framework that can be used to estimate clas...
In this paper, we present a maximum entropy (maxent) approach to the fusion of experts opinions, or ...
We present a general framework for discriminative estimation based on the maximum en-tropy principle...
This paper proposes the use of maximum entropy techniques for text classification. Maximum entropy i...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
The principle of maximum entropy is a powerful framework that can be used to estimate class posteri...
In this paper, we present a maximum entropy (maxent) approach to the fusion of experts opinions, or...
Abstract—Maximum entropy approach to classification is very well studied in applied statistics and m...
Maximum entropy approach to classification is very well studied in applied statistics and machine le...
We present a general framework for discriminative estimation based on the maximum entropy principl...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...
Abstract. In this paper, we propose a Robust Discriminant Analysis based on maximum entropy (MaxEnt)...
Abstract. The principle of maximum entropy is a powerful framework that can be used to estimate clas...
In this paper, we present a maximum entropy (maxent) approach to the fusion of experts opinions, or ...
We present a general framework for discriminative estimation based on the maximum en-tropy principle...
This paper proposes the use of maximum entropy techniques for text classification. Maximum entropy i...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
International audienceThis paper presents a probabilistic part-based approach for texture and object...
The principle of maximum entropy is a powerful framework that can be used to estimate class posteri...
In this paper, we present a maximum entropy (maxent) approach to the fusion of experts opinions, or...
Abstract—Maximum entropy approach to classification is very well studied in applied statistics and m...
Maximum entropy approach to classification is very well studied in applied statistics and machine le...
We present a general framework for discriminative estimation based on the maximum entropy principl...
The concept of maximum entropy can be traced back along multiple threads to Biblical times. Only rec...