Construction of stochastic models that describe the effective dynamics of observables of interest is an useful instrument in various fields of application, such as physics, climate science, and finance. We present a new technique for the construction of such models. From the timeseries of an observable, we construct a discrete-in-time Markov chain and calculate the eigenspectrum of its transition probability (or stochastic) matrix. As a next step we aim to find the generator of a continuous-time Markov chain whose eigenspectrum resembles the observed eigenspectrum as closely as possible, using an appropriate norm. The generator is found by solving a minimization problem: the norm is chosen such that the object function is quadratic and conv...
Computational aspects of obtaining estimates of continuous time macroeconometric models on the basis...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
Abstract. The paper considers a method for construction of numerical models for systems described by...
Construction of stochastic models that describe the effective dynamics of observables of interest is...
Abstract. Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad rang...
A variational approach to the estimation of generators for Markov jump processes from discretely sa...
We address the problem of finding a natural continuous time Markov type process—in open populations—...
Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad range of natur...
A continuous-time Markov process (CTMP) is a collection of variables indexed by a continuous quantit...
peer reviewedThis technical note proposes a new framework for the design of continuous time, finite ...
Abstract. A variational approach to the estimation of generators for Markov jump processes from disc...
A continuous-time Markov process (CTMP) is a collection of variables indexed by a continuous quantit...
Many problems of practical interest rely on Continuous-time Markov chains (CTMCs) defined over combi...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
This new edition of Markov Chains: Models, Algorithms and Applications has been completely reformatt...
Computational aspects of obtaining estimates of continuous time macroeconometric models on the basis...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
Abstract. The paper considers a method for construction of numerical models for systems described by...
Construction of stochastic models that describe the effective dynamics of observables of interest is...
Abstract. Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad rang...
A variational approach to the estimation of generators for Markov jump processes from discretely sa...
We address the problem of finding a natural continuous time Markov type process—in open populations—...
Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad range of natur...
A continuous-time Markov process (CTMP) is a collection of variables indexed by a continuous quantit...
peer reviewedThis technical note proposes a new framework for the design of continuous time, finite ...
Abstract. A variational approach to the estimation of generators for Markov jump processes from disc...
A continuous-time Markov process (CTMP) is a collection of variables indexed by a continuous quantit...
Many problems of practical interest rely on Continuous-time Markov chains (CTMCs) defined over combi...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
This new edition of Markov Chains: Models, Algorithms and Applications has been completely reformatt...
Computational aspects of obtaining estimates of continuous time macroeconometric models on the basis...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
Abstract. The paper considers a method for construction of numerical models for systems described by...