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In recent years the processes with anomalous diffusive dynamics have been widely
discussed in the literature. The classic example of the anomalous diffusive models is the
continuous time random walk (CTRW) which is a natural generalization of the random
walk model. One of the fundamental properties of the classical CTRW is the fact that
in the limit it tends to the Brownian motion subordinated by the so-called β-stable
subordinator when the mean of waiting times is infinite. One can consider the generalization of such subordinated model by taking general inverse subordinator instead of
the β-stable one as a time-change. The inverse subordinator is the first exit time of
the non-decreasing Lévy process also called subordinator. In this paper we consider the
Brownian motion delayed by general inverse subordinator. The main attention is paid
to the estimation method of the parameters of the general inverse subordinator in the
considered model. We propose a novel estimation technique based on the discretization
of the subordinator’s distribution. Using this approach we demonstrate that the distribution of the constant time periods, visible in the trajectory of the considered model, can
be described by the so-called modified cumulative distribution function. This paper is an
extension of the authors’ previous article where a similar approach was applied, however
here we focus on moment-based estimation and compare it with other popular methods
of estimation. The effectiveness of the new algorithm is verified using the Monte Carlo
approach. |
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