Principal Component Analysis: A Generalized Gini Approach
Methodology
2019-10-23 v1 Econometrics
Computation
Abstract
A principal component analysis based on the generalized Gini correlation index is proposed (Gini PCA). The Gini PCA generalizes the standard PCA based on the variance. It is shown, in the Gaussian case, that the standard PCA is equivalent to the Gini PCA. It is also proven that the dimensionality reduction based on the generalized Gini correlation matrix, that relies on city-block distances, is robust to outliers. Monte Carlo simulations and an application on cars data (with outliers) show the robustness of the Gini PCA and provide different interpretations of the results compared with the variance PCA.
Keywords
Cite
@article{arxiv.1910.10133,
title = {Principal Component Analysis: A Generalized Gini Approach},
author = {Charpentier and Arthur and Mussard and Stephane and Tea Ouraga},
journal= {arXiv preprint arXiv:1910.10133},
year = {2019}
}