Nonlinear system theory: Another look at dependence

  1. Wei Biao Wu
  1. Department of Statistics, University of Chicago, 5734 South University Avenue, Chicago, IL 60637
  1. Communicated by Murray Rosenblatt, University of California at San Diego, La Jolla, CA, August 4, 2005 (received for review April 29, 2005)

Abstract

Based on the nonlinear system theory, we introduce previously undescribed dependence measures for stationary causal processes. Our physical and predictive dependence measures quantify the degree of dependence of outputs on inputs in physical systems. The proposed dependence measures provide a natural framework for a limit theory for stationary processes. In particular, under conditions with quite simple forms, we present limit theorems for partial sums, empirical processes, and kernel density estimates. The conditions are mild and easily verifiable because they are directly related to the data-generating mechanisms.

Footnotes

  • E-mail: wbwu{at}galton.uchicago.edu.

  • Author contributions: W. B. W. designed research, performed research, and wrote the paper.

  • Abbreviation: iid, independent and identically distributed.

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