Associated Sequences Demimartingales And Nonparametric Inference


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Associated Sequences, Demimartingales and Nonparametric Inference


Associated Sequences, Demimartingales and Nonparametric Inference

Author: B.L.S. Prakasa Rao

language: en

Publisher: Springer Science & Business Media

Release Date: 2011-11-04


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This book gives a comprehensive review of results for associated sequences and demimartingales developed so far, with special emphasis on demimartingales and related processes. Probabilistic properties of associated sequences, demimartingales and related processes are discussed in the first six chapters. Applications of some of these results to some problems in nonparametric statistical inference for such processes are investigated in the last three chapters.

Estimation of Stochastic Processes with Stationary Increments and Cointegrated Sequences


Estimation of Stochastic Processes with Stationary Increments and Cointegrated Sequences

Author: Maksym Luz

language: en

Publisher: John Wiley & Sons

Release Date: 2019-09-25


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Estimation of Stochastic Processes is intended for researchers in the field of econometrics, financial mathematics, statistics or signal processing. This book gives a deep understanding of spectral theory and estimation techniques for stochastic processes with stationary increments. It focuses on the estimation of functionals of unobserved values for stochastic processes with stationary increments, including ARIMA processes, seasonal time series and a class of cointegrated sequences. Furthermore, this book presents solutions to extrapolation (forecast), interpolation (missed values estimation) and filtering (smoothing) problems based on observations with and without noise, in discrete and continuous time domains. Extending the classical approach applied when the spectral densities of the processes are known, the minimax method of estimation is developed for a case where the spectral information is incomplete and the relations that determine the least favorable spectral densities for the optimal estimations are found.

Non-Stationary Stochastic Processes Estimation


Non-Stationary Stochastic Processes Estimation

Author: Maksym Luz

language: en

Publisher: Walter de Gruyter GmbH & Co KG

Release Date: 2024-05-20


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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.