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Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction

This book integrates the fundamentals of asymptotic theory of statistical inference for time series under nonstandard settings, e.g., infinite variance processes, not only from the point of view of efficiency but also from that of robustness and optimality by minimizing prediction error. This is the...

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Detalles Bibliográficos
Autores principales: Liu, Yan, Akashi, Fumiya, Taniguchi, Masanobu
Lenguaje:eng
Publicado: Springer 2018
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-981-10-0152-9
http://cds.cern.ch/record/2650864
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author Liu, Yan
Akashi, Fumiya
Taniguchi, Masanobu
author_facet Liu, Yan
Akashi, Fumiya
Taniguchi, Masanobu
author_sort Liu, Yan
collection CERN
description This book integrates the fundamentals of asymptotic theory of statistical inference for time series under nonstandard settings, e.g., infinite variance processes, not only from the point of view of efficiency but also from that of robustness and optimality by minimizing prediction error. This is the first book to consider the generalized empirical likelihood applied to time series models in frequency domain and also the estimation motivated by minimizing quantile prediction error without assumption of true model. It provides the reader with a new horizon for understanding the prediction problem that occurs in time series modeling and a contemporary approach of hypothesis testing by the generalized empirical likelihood method. Nonparametric aspects of the methods proposed in this book also satisfactorily address economic and financial problems without imposing redundantly strong restrictions on the model, which has been true until now. Dealing with infinite variance processes makes analysis of economic and financial data more accurate under the existing results from the demonstrative research. The scope of applications, however, is expected to apply to much broader academic fields. The methods are also sufficiently flexible in that they represent an advanced and unified development of prediction form including multiple-point extrapolation, interpolation, and other incomplete past forecastings. Consequently, they lead readers to a good combination of efficient and robust estimate and test, and discriminate pivotal quantities contained in realistic time series models.
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spelling cern-26508642021-04-21T18:38:47Zdoi:10.1007/978-981-10-0152-9http://cds.cern.ch/record/2650864engLiu, YanAkashi, FumiyaTaniguchi, MasanobuEmpirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and predictionMathematical Physics and MathematicsThis book integrates the fundamentals of asymptotic theory of statistical inference for time series under nonstandard settings, e.g., infinite variance processes, not only from the point of view of efficiency but also from that of robustness and optimality by minimizing prediction error. This is the first book to consider the generalized empirical likelihood applied to time series models in frequency domain and also the estimation motivated by minimizing quantile prediction error without assumption of true model. It provides the reader with a new horizon for understanding the prediction problem that occurs in time series modeling and a contemporary approach of hypothesis testing by the generalized empirical likelihood method. Nonparametric aspects of the methods proposed in this book also satisfactorily address economic and financial problems without imposing redundantly strong restrictions on the model, which has been true until now. Dealing with infinite variance processes makes analysis of economic and financial data more accurate under the existing results from the demonstrative research. The scope of applications, however, is expected to apply to much broader academic fields. The methods are also sufficiently flexible in that they represent an advanced and unified development of prediction form including multiple-point extrapolation, interpolation, and other incomplete past forecastings. Consequently, they lead readers to a good combination of efficient and robust estimate and test, and discriminate pivotal quantities contained in realistic time series models.Springeroai:cds.cern.ch:26508642018
spellingShingle Mathematical Physics and Mathematics
Liu, Yan
Akashi, Fumiya
Taniguchi, Masanobu
Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title_full Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title_fullStr Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title_full_unstemmed Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title_short Empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
title_sort empirical likelihood and quantile methods for time series: efficiency, robustness, optimality, and prediction
topic Mathematical Physics and Mathematics
url https://dx.doi.org/10.1007/978-981-10-0152-9
http://cds.cern.ch/record/2650864
work_keys_str_mv AT liuyan empiricallikelihoodandquantilemethodsfortimeseriesefficiencyrobustnessoptimalityandprediction
AT akashifumiya empiricallikelihoodandquantilemethodsfortimeseriesefficiencyrobustnessoptimalityandprediction
AT taniguchimasanobu empiricallikelihoodandquantilemethodsfortimeseriesefficiencyrobustnessoptimalityandprediction