Detecting Novel Associations in Large Data Sets

David N. Reshef(Broad Institute), Yakir Reshef(Broad Institute), Hilary K. Finucane(Weizmann Institute of Science), Sharon R. Grossman(Broad Institute), Gil McVean(Centre for Human Genetics), Peter J. Turnbaugh(Harvard University), Eric S. Lander(Broad Institute), Michael Mitzenmacher(Harvard University), Pardis C. Sabeti(Broad Institute)
Science
December 15, 2011
Cited by 3,351

Abstract

Identifying interesting relationships between pairs of variables in large data sets is increasingly important. Here, we present a measure of dependence for two-variable relationships: the maximal information coefficient (MIC). MIC captures a wide range of associations both functional and not, and for functional relationships provides a score that roughly equals the coefficient of determination (R(2)) of the data relative to the regression function. MIC belongs to a larger class of maximal information-based nonparametric exploration (MINE) statistics for identifying and classifying relationships. We apply MIC and MINE to data sets in global health, gene expression, major-league baseball, and the human gut microbiota and identify known and novel relationships.


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