Stochastic discrimination (SD) depends on a discriminant function for classification. In this paper, an improved SD is introduced to reduce the error rate of the standard SD in the context of a two-class classification problem. The learning procedure of the improved SD consists of two stages. Initially a standard SD, but with shorter learning period is carried out to identify an important space where all the misclassified samples are located. Then the standard SD is modified by 1) restricting sampling in the important space, and 2) introducing a new discriminant function for samples in the important space. It is shown by mathematical derivation that the new discriminant function has the same mean, but with a smaller variance than that of th...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
Exhaustive search in relational learning is generally infeasible, therefore some form of heuristic s...
A general method is introduced for separating points in multidimensional spaces through the use of s...
In this paper, an improved stochastic discrimination (SD) is introduced to reduce the error rate of ...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
There are a variety of methods for inducing predictive systems from observed data. Many of these met...
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...
All stochastic classifiers attempt to improve their classifica-tion performance by constructing an o...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
We study the distributional properties of the linear discriminant function under the assumption of n...
\ua9 2015 Springer Science+Business Media Dordrecht As a model for an on-line classification setting...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
We address classification problems for which the training instances are governed by a distribution t...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
Exhaustive search in relational learning is generally infeasible, therefore some form of heuristic s...
A general method is introduced for separating points in multidimensional spaces through the use of s...
In this paper, an improved stochastic discrimination (SD) is introduced to reduce the error rate of ...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
There are a variety of methods for inducing predictive systems from observed data. Many of these met...
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...
All stochastic classifiers attempt to improve their classifica-tion performance by constructing an o...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
We study the distributional properties of the linear discriminant function under the assumption of n...
\ua9 2015 Springer Science+Business Media Dordrecht As a model for an on-line classification setting...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
We address classification problems for which the training instances are governed by a distribution t...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
Exhaustive search in relational learning is generally infeasible, therefore some form of heuristic s...
A general method is introduced for separating points in multidimensional spaces through the use of s...