| Literature DB >> 31871518 |
By Kelly Bodwin1, Kai Zhang1, Andrew Nobel1.
Abstract
Given data obtained under two sampling conditions, it is often of interest to identify variables that behave differently in one condition than in the other. We introduce a method for differential analysis of second-order behavior called Differential Correlation Mining (DCM). The DCM method identifies differentially correlated sets of variables, with the property that the average pairwise correlation between variables in a set is higher under one sample condition than the other. DCM is based on an iterative search procedure that adaptively updates the size and elements of a candidate variable set. Updates are performed via hypothesis testing of individual variables, based on the asymptotic distribution of their average differential correlation. We investigate the performance of DCM by applying it to simulated data as well as to recent experimental datasets in genomics and brain imaging.Entities:
Keywords: association mining; biostatistics; differential correlation mining; genomics; high dimensional data
Year: 2018 PMID: 31871518 PMCID: PMC6927674 DOI: 10.1214/17-AOAS1083
Source DB: PubMed Journal: Ann Appl Stat ISSN: 1932-6157 Impact factor: 2.083