1.

Record Nr.

UNINA9910862097103321

Autore

Fraix‐Burnet Didier

Titolo

Statistics for astrophysics : Time series analysis / / Didier Fraix‐Burnet, Gérard Grégoire

Pubbl/distr/stampa

Les Ulis : , : EDP Sciences, , [2022]

©2022

Edizione

[1st ed.]

Descrizione fisica

1 online resource (258 p.)

Collana

EDP Sciences Proceedings

Disciplina

523.01

Soggetti

SCIENCE / Physics / Astrophysics

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

Frontmatter -- Organisers -- Lecturers -- Acknowledgments -- List of Participants -- Table of Contents -- Foreword -- 1 - AN OVERVIEW OF THIS BOOK -- 2 - TIME SERIES, FUNDAMENTAL CONCEPTS -- 3 - ARMA AND ARIMA TIME SERIES -- 4 - COMPLEMENTS AND APPLICATIONS -- 5 - KALMAN FILTER AND TIME SERIES -- 6 - AN INTRODUCTION TO STATE SPACE MODELS

Sommario/riassunto

This book is the result of the 2019 session of the School of Statistics for Astrophysics (Stat4Astro) that took place on October, 6 to 11, 2019, at Autrans near Grenoble, in France. The topic of this fourth session was the time series that, from celestial mechanics to gravitational waves, from exoplanets to quasars, concern nearly all the astrophysics. Variable phenomena are ubiquitous in the Universe: periodic (orbits, cycles, pulses, rotations.), transient (explosions, bursts, stellar activity.),random (accretion, ejection.) or regular (apparent motions.). The detection, the characterization and the classification of these variabilities is a discipline of statistics called time series analysis.Time series analysis is not new in astrophysics, but has been the subject of major developments in many other disciplines (meteorology, finance, economy, medical sciences.). In this book,you will find lectures from two statisticians who are experts in this field.Gérard Grégoire, who has a long experience in econometrics and made a huge contribution to both this book and the session. He covers the basic elements of classical L2 time series, in the time domain as well as in the frequency



domain, for univariate and multivariate series, and provides also tools for statistical inference. He gives an extensive presentation of ARMA and ARIMA series, and addresses some related advanced topics. He also devotes a chapter to linear Gaussian state space models and Kalman filtering that will be helpful to follow the last chapter written by Éric Moulines and collaborators: this final chapter is dedicated to state space models in a general framework and sequential MonteCarlo methods to leverage recursions generalizing the Kalman recursions for filtering and smoothing. Many practical exercises are given using the R environment.