Quantifying directed dependence via dimension reduction
Sebastian Fuchs

TL;DR
This paper introduces a new dependence measure based on a copula that captures the extent of dependence of a variable on others, providing a consistent estimator and broad applicability for multivariate dependence analysis.
Contribution
It defines a scale-invariant copula for multivariate dependence, links it to existing measures, and offers a consistent estimator with practical applications.
Findings
Introduces a copula-based measure of dependence.
Establishes the measure's consistency and applicability.
Demonstrates the measure with real data examples.
Abstract
Studying the multivariate extension of copula correlation yields a dimension reduction principle, which turns out to be strongly related with the `simple measure of conditional dependence' recently introduced by Azadkia & Chatterjee (2021). In the present paper, we identify and investigate the dependence structure underlying this dimension-reduction principle, provide a strongly consistent estimator for it, and demonstrate its broad applicability. For that purpose, we define a bivariate copula capturing the scale-invariant extent of dependence of an endogenous random variable on a set of exogenous random variables , and containing the information whether is completely dependent on , and whether and are independent. The dimension reduction principle becomes apparent insofar as the introduced bivariate copula can…
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Taxonomy
TopicsFinancial Risk and Volatility Modeling · Statistical Distribution Estimation and Applications · Statistical Methods and Inference
