Detecting Novel Associations in Large Data Sets
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 (R2) 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.
- Publication:
-
Science
- Pub Date:
- December 2011
- DOI:
- 10.1126/science.1205438
- Bibcode:
- 2011Sci...334.1518R
- Keywords:
-
- COMP/MATH