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Asymptotic statistical methods for stochastic processes

The asymptotic properties of the likelihood ratio play an important part in solving problems in statistics for various schemes of observations. In this book, the author describes the asymptotic methods for parameter estimation and hypothesis testing based on asymptotic properties of the likelihood r...

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Autor principal: Lin′kov, Yu N
Lenguaje:eng
Publicado: American Mathematical Society 2000
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Acceso en línea:http://cds.cern.ch/record/2713837
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author Lin′kov, Yu N
author_facet Lin′kov, Yu N
author_sort Lin′kov, Yu N
collection CERN
description The asymptotic properties of the likelihood ratio play an important part in solving problems in statistics for various schemes of observations. In this book, the author describes the asymptotic methods for parameter estimation and hypothesis testing based on asymptotic properties of the likelihood ratios in the case where an observed stochastic process is a semimartingale. Chapter 1 gives the general basic notions and results of the theory under consideration. Chapters 2 and 3 are devoted to the problem of distinguishing between two simple statistical hypotheses. In Chapter 2, certain types of asymptotic distinguishability between families of hypotheses are introduced. The types are characterized in terms of likelihood ratio, Hellinger integral of order \epsilon, Kakutani-Hellinger distance, and the distance in variation between hypothetical measures, etc. The results in Chapter 2 are used in Chapter 3 in statistical experiments generated by observations of semimartingales. Chapter 4 applies the general limit theorems on asymptotic properties of maximum likelihood and Bayes estimates obtained by Ibragimov and Has'minskii for observations of an arbitrary nature to observations of semimartingales. In Chapter 5, an unknown parameter is assumed to be random, and under this condition, certain information-theoretic problems of estimation of parameters are considered. This English edition includes an extensive list of references and revised bibliographical notes.
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spelling cern-27138372021-04-21T18:09:10Zhttp://cds.cern.ch/record/2713837engLin′kov, Yu NAsymptotic statistical methods for stochastic processesMathematical Physics and MathematicsThe asymptotic properties of the likelihood ratio play an important part in solving problems in statistics for various schemes of observations. In this book, the author describes the asymptotic methods for parameter estimation and hypothesis testing based on asymptotic properties of the likelihood ratios in the case where an observed stochastic process is a semimartingale. Chapter 1 gives the general basic notions and results of the theory under consideration. Chapters 2 and 3 are devoted to the problem of distinguishing between two simple statistical hypotheses. In Chapter 2, certain types of asymptotic distinguishability between families of hypotheses are introduced. The types are characterized in terms of likelihood ratio, Hellinger integral of order \epsilon, Kakutani-Hellinger distance, and the distance in variation between hypothetical measures, etc. The results in Chapter 2 are used in Chapter 3 in statistical experiments generated by observations of semimartingales. Chapter 4 applies the general limit theorems on asymptotic properties of maximum likelihood and Bayes estimates obtained by Ibragimov and Has'minskii for observations of an arbitrary nature to observations of semimartingales. In Chapter 5, an unknown parameter is assumed to be random, and under this condition, certain information-theoretic problems of estimation of parameters are considered. This English edition includes an extensive list of references and revised bibliographical notes.American Mathematical Societyoai:cds.cern.ch:27138372000
spellingShingle Mathematical Physics and Mathematics
Lin′kov, Yu N
Asymptotic statistical methods for stochastic processes
title Asymptotic statistical methods for stochastic processes
title_full Asymptotic statistical methods for stochastic processes
title_fullStr Asymptotic statistical methods for stochastic processes
title_full_unstemmed Asymptotic statistical methods for stochastic processes
title_short Asymptotic statistical methods for stochastic processes
title_sort asymptotic statistical methods for stochastic processes
topic Mathematical Physics and Mathematics
url http://cds.cern.ch/record/2713837
work_keys_str_mv AT linkovyun asymptoticstatisticalmethodsforstochasticprocesses