The strategy surrounding the extraction of a number of mixed variables is examined in this paper in building a model for Linear Discriminant Analysis (LDA). Two methods for extracting crucial variables from a dataset with categorical and continuous variables were employed, namely, multiple correspondence analysis (MCA) and principal component analysis (PCA). However, in this case, direct use of either MCA or PCA on mixed variables is impossible due to restrictions on the structure of data that each method could handle. Therefore, this paper executes some adjustments including a strategy for managing mixed variables so that those mixed variables are equivalent in values. With this, both MCA and PCA can be performed on mixed variables simulta...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
This paper discusses the strategy of conducting variable reduction processes such that they contribu...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
This book expounds the principle and related applications of nonlinear principal component analysis ...
Principal Components Analysis (PCA) is a variable reduction technique helps to reduce a complex data...
Non-parametric smoothed location model is another powerful approach which can be used to discriminat...
In the presence of group imbalance and large number of variables problems, traditional classificatio...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
The strategy surrounding the extraction of a number of mixed variables is examined in this paper in ...
This paper discusses the strategy of conducting variable reduction processes such that they contribu...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
This book expounds the principle and related applications of nonlinear principal component analysis ...
Principal Components Analysis (PCA) is a variable reduction technique helps to reduce a complex data...
Non-parametric smoothed location model is another powerful approach which can be used to discriminat...
In the presence of group imbalance and large number of variables problems, traditional classificatio...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...
A structurally simple, yet powerful, formalism is presented for adapting attribute combinations in h...