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Local Linear Dependence Measure for Functionally Correlated Variables

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Abstract

We propose a new correlation measure for functionally correlated variables based on local linear dependence. It is able to detect non-linear, non-monotonic and even implicit relationships. Applying the classical linear correlation in a local framework combined with tools from Principal Components Analysis the statistic is capable of detecting very complex dependences among the data. In a first part we prove that it meets the properties of independence, similarity invariance and dependence and the axiom of continuity. In a second part we run a numerical simulation over a variety of dependences and compare it to other dependence measures in the literature. The results indicate that we outperform existing coefficients. We also show better stability and robustness to noise.

Suggested Citation

  • Loann D. Desboulets & Costin Protopopescu, 2018. "Local Linear Dependence Measure for Functionally Correlated Variables," AMSE Working Papers 1853, Aix-Marseille School of Economics, France.
  • Handle: RePEc:aim:wpaimx:1853
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    File URL: https://www.amse-aixmarseille.fr/sites/default/files/_dt/2012/wp_2018_-_nr_53.pdf
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    Keywords

    local correlation; Pearson coefficient; PCA; non-parametric statistic; implicit dependence; non-monotonic; non-linear;
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