Bayesian Inference of State Space Models

Bayesian Inference of State Space Models
Author :
Publisher : Springer Nature
Total Pages : 503
Release :
ISBN-10 : 9783030761240
ISBN-13 : 303076124X
Rating : 4/5 (24X Downloads)

Book Synopsis Bayesian Inference of State Space Models by : Kostas Triantafyllopoulos

Download or read book Bayesian Inference of State Space Models written by Kostas Triantafyllopoulos and published by Springer Nature. This book was released on 2021-11-12 with total page 503 pages. Available in PDF, EPUB and Kindle. Book excerpt: 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.


Bayesian Inference of State Space Models Related Books

Bayesian Inference of State Space Models
Language: en
Pages: 503
Authors: Kostas Triantafyllopoulos
Categories: Mathematics
Type: BOOK - Published: 2021-11-12 - Publisher: Springer Nature

GET EBOOK

Bayesian Inference of State Space Models: Kalman Filtering and Beyond offers a comprehensive introduction to Bayesian estimation and forecasting for state space
Bayesian Inference of State Space Models
Language: en
Pages: 0
Authors: Kostas Triantafyllopoulos
Categories: Mathematics
Type: BOOK - Published: 2022-11-13 - Publisher: Springer

GET EBOOK

Bayesian Inference of State Space Models: Kalman Filtering and Beyond offers a comprehensive introduction to Bayesian estimation and forecasting for state space
Bayesian Inference of State Space Models
Language: en
Pages: 0
Authors: Kostas Triantafyllopoulos
Categories:
Type: BOOK - Published: 2021 - Publisher:

GET EBOOK

Bayesian Inference of State Space Models: Kalman Filtering and Beyond offers a comprehensive introduction to Bayesian estimation and forecasting for state space
Time Series Analysis for the State-Space Model with R/Stan
Language: en
Pages: 350
Authors: Junichiro Hagiwara
Categories: Mathematics
Type: BOOK - Published: 2021-08-30 - Publisher: Springer Nature

GET EBOOK

This book provides a comprehensive and concrete illustration of time series analysis focusing on the state-space model, which has recently attracted increasing
Bayesian Filtering and Smoothing
Language: en
Pages: 255
Authors: Simo Särkkä
Categories: Computers
Type: BOOK - Published: 2013-09-05 - Publisher: Cambridge University Press

GET EBOOK

A unified Bayesian treatment of the state-of-the-art filtering, smoothing, and parameter estimation algorithms for non-linear state space models.