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Original Articles

A Simple Distribution-Free Algorithm for Generating Simulated High-Dimensional Correlated Data with an Autoregressive Structure

, , , &
Pages 89-98 | Received 15 Dec 2010, Accepted 05 Apr 2011, Published online: 15 Sep 2011
 

Abstract

A distribution-free method to generate high-dimensional sequences of dependent variables with an autoregressive structure is presented. The quantile or fractile correlation (i.e., the moment correlation of the quantiles) is used as measure of dependence among a set of contiguous variables. The proposed algorithm breaks the sequence in small parts and avoids having to define one large correlation matrix for the entire high-dimensional sequence of variables. Simulations based on proteomics data are presented. Results suggest that negligible or no loss of fractile correlation occurs by splitting the generation of a sequence into small parts.

Mathematics Subject Classification:

Acknowledgment

This publication was supported by Grant Number (U54 CA118948-01) from the National Cancer Institute.

Notes

1Evaluated on Uniform(0,1) variables.

2Evaluated on variables generated under a Dagum distribution.

3Evaluated on variables generated under Dagum or Gamma distributions.

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