Generalized R-squared for Detecting Dependence
Abstract
Detecting dependence between two random variables is a fundamental problem. Although the Pearson correlation is effective for capturing linear dependency, it can be entirely powerless for detecting nonlinear and/or heteroscedastic patterns. We introduce a new measure, G-squared, to test whether two univariate random variables are independent and to measure the strength of their relationship. The G-squared is almost identical to the square of the Pearson correlation coefficient, R-squared, for linear relationships with constant error variance, and has the intuitive meaning of the piecewise R-squared between the variables. It is particularly effective in handling nonlinearity and heteroscedastic errors. We propose two estimators of G-squared and show their consistency. Simulations demonstrate that G-squared estimates are among the most powerful test statistics compared with several state-of-the-art methods.
Cite
@article{arxiv.1604.02736,
title = {Generalized R-squared for Detecting Dependence},
author = {Xufei Wang and Bo Jiang and Jun S. Liu},
journal= {arXiv preprint arXiv:1604.02736},
year = {2016}
}