## Ε½ . Ε½ . The application of a genetic algorithm GA to the selection of principal components PCs is proposed as an efficient method to determine the optimal multivariate regression model. This stochastic method was compared with other determinis-Ε½ . tic methods such as: exhaustive search here tak
Principal Components Selection by the Criterion of the Minimum Mean Difference of Complexity
β Scribed by G.Q. Qian; G. Gabor; R.P. Gupta
- Publisher
- Elsevier Science
- Year
- 1994
- Tongue
- English
- Weight
- 784 KB
- Volume
- 49
- Category
- Article
- ISSN
- 0047-259X
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β¦ Synopsis
Based on the concept of complexity or minimum description length developed by Kolmogorov, Rissanen, Wallace, and others, an index of predictive power is proposed as a criterion to select the principal components of a random vector distributed in a parametric family. This criterion, when applied to the principal components selection, considers the lost information due to the reduction of the parameters as well as the observed variables. The principal components, obtained by minimizing the index of predictive power, turn out to be identical to the classical principal components when the assumed distribution is normal. A test procedure for the principal components selection is constructed and discussed. Finally, principal components for a type of (\varepsilon)-contaminated normal family are given, and are shown to converge to those of the normal distribution. Results from a simulation study are also presented. 1994 Academic Press, Inc.
π SIMILAR VOLUMES
The principal components method enables component spectra from pigment mixtures to be estimated by evaluating the eigenvectors of the second moment matrix. The components are linear combinations of these eigenvectors, but cannot be identified unambiguously With the conditions of non-negativity of sp