2000
DOI: 10.1103/physreve.62.6178
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Stochastic dynamics of time correlation in complex systems with discrete time

Abstract: In this paper we present the concept of description of random processes in complex systems with discrete time. It involves the description of kinetics of discrete processes by means of the chain of finite-difference non-Markov equations for time correlation functions (TCFs). We have introduced the dynamic (time dependent) information Shannon entropy S(i)(t) where i=0,1,2,3,ellipsis, as an information measure of stochastic dynamics of time correlation (i=0) and time memory (i=1,2,3,ellipsis). The set of functio… Show more

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Cited by 59 publications
(104 citation statements)
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“…It was shown in Refs. [2,10,11] that the finite-difference kinetic equation of a nonMarkov type for TCF M 0 ðtÞ can be written by means of the technique of projection operators of Zwanzig'-Mori's type [14,15] …”
Section: Macroscopic Description In the Analysis Of Stochastic Processesmentioning
confidence: 99%
“…It was shown in Refs. [2,10,11] that the finite-difference kinetic equation of a nonMarkov type for TCF M 0 ðtÞ can be written by means of the technique of projection operators of Zwanzig'-Mori's type [14,15] …”
Section: Macroscopic Description In the Analysis Of Stochastic Processesmentioning
confidence: 99%
“…The first method is based on the notions and concepts of the statistical theory of discrete non-Markov stochastic processes [1,2]. The method is connected with the studies of statistical non-Markov effects, long-and short-range statistical memory effects, regularity and stochastic behavior effects, and dynamic alternation of relaxation modes in the patient in various dynamic states.…”
Section: Introduction Parkinson's Diseasementioning
confidence: 99%
“…We use the dependences a(t) and M 1 (t) to analyze the amplitude of Parkinsonian tremor velocity. We also use these dependences to calculate the non-Markovity parameter [1,2] which characterizes the degree of correlativity of the signal. The studies, which have been carried out earlier [2,12,13], show that this parameter contains detailed information about the physiological state of a system.…”
Section: Introduction Parkinson's Diseasementioning
confidence: 99%
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