Title :
Mixing Coefficients Between Discrete and Real Random Variables: Computation and Properties
Author :
Ahsen, M. Eren ; Vidyasagar, M.
Author_Institution :
Dept. of Bioeng., Univ. of Texas at Dallas, Richardson, TX, USA
Abstract :
In this paper, we study the problem of estimating the alpha-, beta-, and phi-mixing coefficients between two random variables, that can either assume values in a finite set or the set of real numbers. In either case, explicit closed-form formulas for the beta-mixing coefficient are already known. Therefore for random variables assuming values in a finite set, our contributions are twofold: 1) In the case of the alpha-mixing coefficient, we show that determining whether or not it exceeds a prespecified threshold is NP-complete, and provide efficiently computable upper and lower bounds. 2) We derive an exact closed-form formula for the phi-mixing coefficient. Next, we prove analogs of the data-processing inequality from information theory for each of the three kinds of mixing coefficients. Then we move on to real-valued random variables, and show that by using percentile binning and allowing the number of bins to increase more slowly than the number of samples, we can generate empirical estimates that are consistent, i.e., converge to the true values as the number of samples approaches infinity.
Keywords :
computational complexity; estimation theory; number theory; set theory; NP-complete; alpha-mixing coefficients estimation; beta-mixing coefficients estimation; data-processing inequality; discrete variables; exact closed-form formula; explicit closed-form formulas; finite set; information theory; percentile binning; phi-mixing coefficients estimation; real numbers; real random variables; real-valued random variables; Genomics; Joints; Mutual information; Random variables; Stochastic processes; Tin; Vectors; Data-driven partitions; NP-completeness; data processing inequality; mixing coefficients;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2013.2281481