In this paper, we consider a linear supervised dimension reduction method for classification settings: stochastic discriminant analysis (SDA). This method matches similarities between points in the projection space with those in a response space. The similarities are represented by transforming distances between points to joint probabilities using a transformation which resembles Student’s t-distribution. The matching is done by minimizing the Kullback–Leibler divergence between the two probability distributions. We compare the performance of our SDA method against several state-of-the-art methods for supervised linear dimension reduction. In our experiments, we found that the performance of the SDA method is often better and typically at l...
<p>Seven different combinations of dimension reduction algorithms and classifiers perform differentl...
Dimension reduction transformations in discriminant analysis are introduced. Their properties, as we...
Abstract: We compare two linear dimension-reduction methods for statisti-cal discrimination in terms...
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 aim of dimensionality reduction is to reduce the number of considered variables without removing...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
Dimensionality reduction is an important issue when facing high-dimensional data. For supervised dim...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
We study the distributional properties of the linear discriminant function under the assumption of n...
Discriminant analysis (DA), including linear discriminant analysis (LDA) and quadratic discriminant ...
Includes bibliographical references (p. 110-114).This dissertation consists of three selected topics...
The linear discriminant analysis (LDA) is a popular technique for dimensionality reduction, neverthe...
Abstract—Subspace selection approaches are powerful tools in pattern classification and data visuali...
<p>Seven different combinations of dimension reduction algorithms and classifiers perform differentl...
Dimension reduction transformations in discriminant analysis are introduced. Their properties, as we...
Abstract: We compare two linear dimension-reduction methods for statisti-cal discrimination in terms...
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 aim of dimensionality reduction is to reduce the number of considered variables without removing...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
Dimensionality reduction is an important issue when facing high-dimensional data. For supervised dim...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Dimensionality Reduction (DR) is the process of finding a reduced representation of a data set accor...
We study the distributional properties of the linear discriminant function under the assumption of n...
Discriminant analysis (DA), including linear discriminant analysis (LDA) and quadratic discriminant ...
Includes bibliographical references (p. 110-114).This dissertation consists of three selected topics...
The linear discriminant analysis (LDA) is a popular technique for dimensionality reduction, neverthe...
Abstract—Subspace selection approaches are powerful tools in pattern classification and data visuali...
<p>Seven different combinations of dimension reduction algorithms and classifiers perform differentl...
Dimension reduction transformations in discriminant analysis are introduced. Their properties, as we...
Abstract: We compare two linear dimension-reduction methods for statisti-cal discrimination in terms...