MLOct 26, 2017

From Distance Correlation to Multiscale Graph Correlation

arXiv:1710.09768v375 citations
Originality Incremental advance
AI Analysis

This addresses the need for a universally consistent dependence measure in statistics and machine learning, with broad applications in scientific discovery, though it builds incrementally on existing distance correlation methods.

The paper introduces Multiscale Graph Correlation (MGC), a new correlation measure that generalizes distance correlation to detect general dependencies, achieving better performance in simulations with various dependency types while maintaining power in monotone cases.

Understanding and developing a correlation measure that can detect general dependencies is not only imperative to statistics and machine learning, but also crucial to general scientific discovery in the big data age. In this paper, we establish a new framework that generalizes distance correlation --- a correlation measure that was recently proposed and shown to be universally consistent for dependence testing against all joint distributions of finite moments --- to the Multiscale Graph Correlation (MGC). By utilizing the characteristic functions and incorporating the nearest neighbor machinery, we formalize the population version of local distance correlations, define the optimal scale in a given dependency, and name the optimal local correlation as MGC. The new theoretical framework motivates a theoretically sound Sample MGC and allows a number of desirable properties to be proved, including the universal consistency, convergence and almost unbiasedness of the sample version. The advantages of MGC are illustrated via a comprehensive set of simulations with linear, nonlinear, univariate, multivariate, and noisy dependencies, where it loses almost no power in monotone dependencies while achieving better performance in general dependencies, compared to distance correlation and other popular methods.

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