Time Series Analysis for the State Space Model with R Stan

Time Series Analysis for the State Space Model with R Stan
Author: Junichiro Hagiwara
Publsiher: Springer Nature
Total Pages: 350
Release: 2021-08-30
Genre: Mathematics
ISBN: 9789811607110

Download Time Series Analysis for the State Space Model with R Stan Book in PDF, Epub and Kindle

This book provides a comprehensive and concrete illustration of time series analysis focusing on the state-space model, which has recently attracted increasing attention in a broad range of fields. The major feature of the book lies in its consistent Bayesian treatment regarding whole combinations of batch and sequential solutions for linear Gaussian and general state-space models: MCMC and Kalman/particle filter. The reader is given insight on flexible modeling in modern time series analysis. The main topics of the book deal with the state-space model, covering extensively, from introductory and exploratory methods to the latest advanced topics such as real-time structural change detection. Additionally, a practical exercise using R/Stan based on real data promotes understanding and enhances the reader’s analytical capability.

Time Series Analysis by State Space Methods

Time Series Analysis by State Space Methods
Author: James Durbin,Siem Jan Koopman
Publsiher: Oxford University Press
Total Pages: 280
Release: 2001-06-21
Genre: Business & Economics
ISBN: 0198523548

Download Time Series Analysis by State Space Methods Book in PDF, Epub and Kindle

State space time series analysis emerged in the 1960s in engineering, but its applications have spread to other fields. Durbin (statistics, London School of Economics and Political Science) and Koopman (econometrics, Free U., Amsterdam) extol the virtues of such models over the main analytical system currently used for time series data, Box-Jenkins' ARIMA. What distinguishes state space time models is that they separately model components such as trend, seasonal, regression elements and disturbance terms. Part I focuses on traditional and new techniques based on the linear Gaussian model. Part II presents new material extending the state space model to non-Gaussian observations. c. Book News Inc.

Time Series Analysis by State Space Methods

Time Series Analysis by State Space Methods
Author: James Durbin,Siem Jan Koopman
Publsiher: Oxford University Press
Total Pages: 369
Release: 2012-05-03
Genre: Business & Economics
ISBN: 9780199641178

Download Time Series Analysis by State Space Methods Book in PDF, Epub and Kindle

This is a comprehensive treatment of the state space approach to time series analysis. A distinguishing feature of state space time series models is that observations are regarded as made up of distinct components, which are each modelled separately.

State Space Modeling of Time Series

State Space Modeling of Time Series
Author: Masanao Aoki
Publsiher: Springer Science & Business Media
Total Pages: 339
Release: 2013-03-09
Genre: Business & Economics
ISBN: 9783642758836

Download State Space Modeling of Time Series Book in PDF, Epub and Kindle

In this book, the author adopts a state space approach to time series modeling to provide a new, computer-oriented method for building models for vector-valued time series. This second edition has been completely reorganized and rewritten. Background material leading up to the two types of estimators of the state space models is collected and presented coherently in four consecutive chapters. New, fuller descriptions are given of state space models for autoregressive models commonly used in the econometric and statistical literature. Backward innovation models are newly introduced in this edition in addition to the forward innovation models, and both are used to construct instrumental variable estimators for the model matrices. Further new items in this edition include statistical properties of the two types of estimators, more details on multiplier analysis and identification of structural models using estimated models, incorporation of exogenous signals and choice of model size. A whole new chapter is devoted to modeling of integrated, nearly integrated and co-integrated time series.

Bayesian Statistical Modeling with Stan R and Python

Bayesian Statistical Modeling with Stan  R  and Python
Author: Kentaro Matsuura
Publsiher: Springer Nature
Total Pages: 395
Release: 2023-01-24
Genre: Computers
ISBN: 9789811947551

Download Bayesian Statistical Modeling with Stan R and Python Book in PDF, Epub and Kindle

This book provides a highly practical introduction to Bayesian statistical modeling with Stan, which has become the most popular probabilistic programming language. The book is divided into four parts. The first part reviews the theoretical background of modeling and Bayesian inference and presents a modeling workflow that makes modeling more engineering than art. The second part discusses the use of Stan, CmdStanR, and CmdStanPy from the very beginning to basic regression analyses. The third part then introduces a number of probability distributions, nonlinear models, and hierarchical (multilevel) models, which are essential to mastering statistical modeling. It also describes a wide range of frequently used modeling techniques, such as censoring, outliers, missing data, speed-up, and parameter constraints, and discusses how to lead convergence of MCMC. Lastly, the fourth part examines advanced topics for real-world data: longitudinal data analysis, state space models, spatial data analysis, Gaussian processes, Bayesian optimization, dimensionality reduction, model selection, and information criteria, demonstrating that Stan can solve any one of these problems in as little as 30 lines. Using numerous easy-to-understand examples, the book explains key concepts, which continue to be useful when using future versions of Stan and when using other statistical modeling tools. The examples do not require domain knowledge and can be generalized to many fields. The book presents full explanations of code and math formulas, enabling readers to extend models for their own problems. All the code and data are on GitHub.

The Analysis of Time Series

The Analysis of Time Series
Author: Chris Chatfield,Haipeng Xing
Publsiher: CRC Press
Total Pages: 398
Release: 2019-04-25
Genre: Mathematics
ISBN: 9781498795647

Download The Analysis of Time Series Book in PDF, Epub and Kindle

This new edition of this classic title, now in its seventh edition, presents a balanced and comprehensive introduction to the theory, implementation, and practice of time series analysis. The book covers a wide range of topics, including ARIMA models, forecasting methods, spectral analysis, linear systems, state-space models, the Kalman filters, nonlinear models, volatility models, and multivariate models. It also presents many examples and implementations of time series models and methods to reflect advances in the field. Highlights of the seventh edition: A new chapter on univariate volatility models A revised chapter on linear time series models A new section on multivariate volatility models A new section on regime switching models Many new worked examples, with R code integrated into the text The book can be used as a textbook for an undergraduate or a graduate level time series course in statistics. The book does not assume many prerequisites in probability and statistics, so it is also intended for students and data analysts in engineering, economics, and finance.

Natural Geo Disasters and Resiliency

Natural Geo Disasters and Resiliency
Author: Hemanta Hazarika
Publsiher: Springer Nature
Total Pages: 516
Release: 2024
Genre: Electronic Book
ISBN: 9789819992232

Download Natural Geo Disasters and Resiliency Book in PDF, Epub and Kindle

Bayesian Inference of State Space Models

Bayesian Inference of State Space Models
Author: Kostas Triantafyllopoulos
Publsiher: Springer Nature
Total Pages: 503
Release: 2021-11-12
Genre: Mathematics
ISBN: 9783030761240

Download Bayesian Inference of State Space Models Book in PDF, Epub and Kindle

Bayesian Inference of State Space Models: Kalman Filtering and Beyond offers a comprehensive introduction to Bayesian estimation and forecasting for state space models. The celebrated Kalman filter, with its numerous extensions, takes centre stage in the book. Univariate and multivariate models, linear Gaussian, non-linear and non-Gaussian models are discussed with applications to signal processing, environmetrics, economics and systems engineering. Over the past years there has been a growing literature on Bayesian inference of state space models, focusing on multivariate models as well as on non-linear and non-Gaussian models. The availability of time series data in many fields of science and industry on the one hand, and the development of low-cost computational capabilities on the other, have resulted in a wealth of statistical methods aimed at parameter estimation and forecasting. This book brings together many of these methods, presenting an accessible and comprehensive introduction to state space models. A number of data sets from different disciplines are used to illustrate the methods and show how they are applied in practice. The R package BTSA, created for the book, includes many of the algorithms and examples presented. The book is essentially self-contained and includes a chapter summarising the prerequisites in undergraduate linear algebra, probability and statistics. An up-to-date and complete account of state space methods, illustrated by real-life data sets and R code, this textbook will appeal to a wide range of students and scientists, notably in the disciplines of statistics, systems engineering, signal processing, data science, finance and econometrics. With numerous exercises in each chapter, and prerequisite knowledge conveniently recalled, it is suitable for upper undergraduate and graduate courses.