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Semimartingales and their Statistical Inference / by B.L.S.Prakasa Rao.

By: Rao, B.L.S.Prakasa [author.].
Contributor(s): Taylor and Francis.
Material type: materialTypeLabelBookPublisher: Boca Raton, FL : Taylor and Francis, an imprint of Routledge, [2019]Copyright date: ©1999Edition: First edition.Description: 1 online resource (450 pages).Content type: text Media type: computer Carrier type: online resourceISBN: 9780203739891 (e-book : PDF).Subject(s): Mathematical statistics -- Asymptotic theory | SemimartingalesGenre/Form: Electronic books.Additional physical formats: Print version: : No titleDDC classification: 519.5 Online resources: Click here to view. Also available in print format.
Contents:
Semimartingales Introduction Stochastic Processes Doob-Meyer Decomposition Stochastic Integration Local Martingales Semimartingales Girsanov's Theorem Limit Theorems for Semimartingales Diffusion Type Processes Point Processes Exponential Families of Stochastic Processes Introduction Exponential Families of Semimartingales Stochastic Time Transformation Asymptotic Likelihood Theory Introduction Examples Asymptotic Likelihood Theory for a Class of Exponential Families of Semimartingales Asymptotic Likelihood Theory for General Processes Exercises Asymptotic Likelihood Theory for Diffusion Processes with Jumps Introduction Absolute Continuity for Measures Generated by Diffusions with Jumps Score Vector and Information Matrix Asymptotic Likelihood Theory for Diffusion Processes with Jumps Asymptotic Likelihood Theory for Exponential Families Examples Exercises Quasi-likelihood and Semimartingales Quasi-Likelihood and Discrete Time Processes Quasi-Likelihood and Continuous Time Processes Quasi-Likelihood and Special Semimartingales Quasi-Likelihood and Partially Specified Counting Processes Examples Exercises Local Asymptotic Behavior of Semimartingales Experiments Locally Asymptotic Mixed Normality Locally Asymptotic Quadraticity Locally Asymptotic Infinite Divisibility Locally Asymptotic Normality (Infinite Dimensional Parameter Case) Multiplicative Models and Asymptotic Variance Bounds Exercises Likelihood and Asymptotic Efficiency Fully Specified Likelihood (Factorisable Models) Partially Specified Likelihood Partial Likelihood and Asymptotic Efficiency Partially Specified Likelihood and Asymptotic Efficiency Inference for Counting Processes Introduction Parametric Inference for Counting Processes Semiparametric Inference for Counting Processes Nonparametric.
Abstract: Statistical inference carries great significance in model building from both the theoretical and the applications points of view. Its applications to engineering and economic systems, financial economics, and the biological and medical sciences have made statistical inference for stochastic processes a well-recognized and important branch of statistics and probability. The class of semimartingales includes a large class of stochastic processes, including diffusion type processes, point processes, and diffusion type processes with jumps, widely used for stochastic modeling. Until now, however, researchers have had no single reference that collected the research conducted on the asymptotic theory for semimartingales.Semimartingales and their Statistical Inference, fills this need by presenting a comprehensive discussion of the asymptotic theory of semimartingales at a level needed for researchers working in the area of statistical inference for stochastic processes. The author brings together into one volume the state-of-the-art in the inferential aspect for such processes. The topics discussed include: Asymptotic likelihood theory Quasi-likelihood Likelihood and efficiency Inference for counting processes Inference for semimartingale regression modelsThe author addresses a number of stochastic modeling applications from engineering, economic systems, financial economics, and medical sciences. He also includes some of the new and challenging statistical and probabilistic problems facing today's active researchers working in the area of inference for stochastic processes.
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Semimartingales Introduction Stochastic Processes Doob-Meyer Decomposition Stochastic Integration Local Martingales Semimartingales Girsanov's Theorem Limit Theorems for Semimartingales Diffusion Type Processes Point Processes Exponential Families of Stochastic Processes Introduction Exponential Families of Semimartingales Stochastic Time Transformation Asymptotic Likelihood Theory Introduction Examples Asymptotic Likelihood Theory for a Class of Exponential Families of Semimartingales Asymptotic Likelihood Theory for General Processes Exercises Asymptotic Likelihood Theory for Diffusion Processes with Jumps Introduction Absolute Continuity for Measures Generated by Diffusions with Jumps Score Vector and Information Matrix Asymptotic Likelihood Theory for Diffusion Processes with Jumps Asymptotic Likelihood Theory for Exponential Families Examples Exercises Quasi-likelihood and Semimartingales Quasi-Likelihood and Discrete Time Processes Quasi-Likelihood and Continuous Time Processes Quasi-Likelihood and Special Semimartingales Quasi-Likelihood and Partially Specified Counting Processes Examples Exercises Local Asymptotic Behavior of Semimartingales Experiments Locally Asymptotic Mixed Normality Locally Asymptotic Quadraticity Locally Asymptotic Infinite Divisibility Locally Asymptotic Normality (Infinite Dimensional Parameter Case) Multiplicative Models and Asymptotic Variance Bounds Exercises Likelihood and Asymptotic Efficiency Fully Specified Likelihood (Factorisable Models) Partially Specified Likelihood Partial Likelihood and Asymptotic Efficiency Partially Specified Likelihood and Asymptotic Efficiency Inference for Counting Processes Introduction Parametric Inference for Counting Processes Semiparametric Inference for Counting Processes Nonparametric.

Statistical inference carries great significance in model building from both the theoretical and the applications points of view. Its applications to engineering and economic systems, financial economics, and the biological and medical sciences have made statistical inference for stochastic processes a well-recognized and important branch of statistics and probability. The class of semimartingales includes a large class of stochastic processes, including diffusion type processes, point processes, and diffusion type processes with jumps, widely used for stochastic modeling. Until now, however, researchers have had no single reference that collected the research conducted on the asymptotic theory for semimartingales.Semimartingales and their Statistical Inference, fills this need by presenting a comprehensive discussion of the asymptotic theory of semimartingales at a level needed for researchers working in the area of statistical inference for stochastic processes. The author brings together into one volume the state-of-the-art in the inferential aspect for such processes. The topics discussed include: Asymptotic likelihood theory Quasi-likelihood Likelihood and efficiency Inference for counting processes Inference for semimartingale regression modelsThe author addresses a number of stochastic modeling applications from engineering, economic systems, financial economics, and medical sciences. He also includes some of the new and challenging statistical and probabilistic problems facing today's active researchers working in the area of inference for stochastic processes.

Also available in print format.

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