| Literature DB >> 33923154 |
Leonardo Rydin Gorjão1,2, Dirk Witthaut1,2, Klaus Lehnertz3,4,5, Pedro G Lind6.
Abstract
With the aim of improving the reconstruction of stochastic evolution equations from empirical time-series data, we derive a full representation of the generator of the Kramers-Moyal operator via a power-series expansion of the exponential operator. This expansion is necessary for deriving the different terms in a stochastic differential equation. With the full representation of this operator, we are able to separate finite-time corrections of the power-series expansion of arbitrary order into terms with and without derivatives of the Kramers-Moyal coefficients. We arrive at a closed-form solution expressed through conditional moments, which can be extracted directly from time-series data with a finite sampling intervals. We provide all finite-time correction terms for parametric and non-parametric estimation of the Kramers-Moyal coefficients for discontinuous processes which can be easily implemented-employing Bell polynomials-in time-series analyses of stochastic processes. With exemplary cases of insufficiently sampled diffusion and jump-diffusion processes, we demonstrate the advantages of our arbitrary-order finite-time corrections and their impact in distinguishing diffusion and jump-diffusion processes strictly from time-series data.Entities:
Keywords: Bell polynomials; Fokker–Planck equation; Kramers–Moyal coefficients; Kramers–Moyal equation; arbitrary-order approximations; non-parametric estimators; stochastic processes
Year: 2021 PMID: 33923154 DOI: 10.3390/e23050517
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524