The problem of forecasting future values of economic and physical processes, the problem of restoring lost information, cleaning signals or other data observations from noise, is magnified in an information-laden word. Methods of stochastic processes estimation depend on two main factors. The first factor is construction of a model of the process being investigated. The second factor is the available information about the structure of the process under consideration. In this book, we propose results of the investigation of the problem of mean square optimal estimation (extrapolation, interpolation, and filtering) of linear functionals depending on unobserved values of stochastic sequences and processes with periodically stationary and long memory multiplicative seasonal increments. Formulas for calculating the mean square errors and the spectral characteristics of the optimal estimates of the functionals are derived in the case of spectral certainty, where spectral structure of the considered sequences and processes are exactly known. In the case where spectral densities of the sequences and processes are not known exactly while some sets of admissible spectral densities are given, we apply the minimax-robust method of estimation.
Maksym Luz & Mikhail Moklyachuk
Non-Stationary Stochastic Processes Estimation [PDF ebook]
Vector Stationary Increments, Periodically Stationary Multi-Seasonal Increments
Non-Stationary Stochastic Processes Estimation [PDF ebook]
Vector Stationary Increments, Periodically Stationary Multi-Seasonal Increments
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Lingua Inglese ● Formato PDF ● Pagine 310 ● ISBN 9783111325620 ● Casa editrice De Gruyter ● Pubblicato 2024 ● Scaricabile 3 volte ● Moneta EUR ● ID 9435265 ● Protezione dalla copia Adobe DRM
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