There are a variety of methods for inducing predictive systems from observed data. Many of these methods fall into the field of study of machine learning. Some of the most effective algorithms in this domain succeed by combining a number of distinct predictive elements to form what can be described as a type of committee. Well known examples of such algorithms are AdaBoost, bagging and random forests. Stochastic discrimination is a committee-forming algorithm that attempts to combine a large number of relatively simple predictive elements in an effort to achieve a high degree of accuracy. A key element of the success of this technique is that its coverage of the observed feature space should be uniform in nature. We introduce a new uniformi...
In this paper, we consider a linear supervised dimension reduction method for classification setting...
Abstract — In this paper, we consider a linear supervised dimension reduction method for classificat...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
There are a variety of methods for inducing predictive systems from observed data. Many of these met...
Stochastic discrimination (SD) depends on a discriminant function for classification. In this paper,...
In this paper, an improved stochastic discrimination (SD) is introduced to reduce the error rate of ...
. Classifier committee learning methods generate multiple classifiers to form a committee by repeate...
. Classifier learning is a key technique for KDD. Approaches to learning classifier committees, incl...
Exhaustive search in relational learning is generally infeasible, therefore some form of heuristic s...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
Discrimination is a supervised problem in statistics and machine learning that begins with data from...
In recent years, machine learning (ML) algorithms have been deployed in safety-critical and high-sta...
International audienceWe introduce a new model addressing feature selection from a large dictionary ...
We introduce a new model addressing feature selection from a large dictionary of variables that can ...
A general method is introduced for separating points in multidimensional spaces through the use of s...
In this paper, we consider a linear supervised dimension reduction method for classification setting...
Abstract — In this paper, we consider a linear supervised dimension reduction method for classificat...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
There are a variety of methods for inducing predictive systems from observed data. Many of these met...
Stochastic discrimination (SD) depends on a discriminant function for classification. In this paper,...
In this paper, an improved stochastic discrimination (SD) is introduced to reduce the error rate of ...
. Classifier committee learning methods generate multiple classifiers to form a committee by repeate...
. Classifier learning is a key technique for KDD. Approaches to learning classifier committees, incl...
Exhaustive search in relational learning is generally infeasible, therefore some form of heuristic s...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
Discrimination is a supervised problem in statistics and machine learning that begins with data from...
In recent years, machine learning (ML) algorithms have been deployed in safety-critical and high-sta...
International audienceWe introduce a new model addressing feature selection from a large dictionary ...
We introduce a new model addressing feature selection from a large dictionary of variables that can ...
A general method is introduced for separating points in multidimensional spaces through the use of s...
In this paper, we consider a linear supervised dimension reduction method for classification setting...
Abstract — In this paper, we consider a linear supervised dimension reduction method for classificat...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...