๐”– Scriptorium
โœฆ   LIBER   โœฆ

๐Ÿ“

Dynamic Stochastic Models from Empirical Data

โœ Scribed by R.L. Kashyap and A. Ramachandra Rao (Eds.)


Publisher
Academic Press
Year
1976
Tongue
English
Leaves
351
Series
Mathematics in Science and Engineering 122
Category
Library

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โœฆ Table of Contents


Content:
Edited by
Page iii

Copyright page
Page iv

Dedication
Pages v-vi

Preface
Pages xi-xii

Acknowledgments
Page xiii

Notation and Symbols
Pages xv-xvi

Chapter I Introduction to the Construction of Models
Pages 1-10

Chapter II Preliminary Analysis of Stochastic Dynamical Systems
Pages 11-41

Chapter III Structure of Univariate Models
Pages 42-66

Chapter IV Estimability in Single Output Systems
Pages 67-92

Chapter V Structure and Estimability in Multivariate Systems
Pages 93-121

Chapter VI Estimation in Autoregressive Processes
Pages 122-159

Chapter VII Parameter Estimation in Systems with Both Moving Average and Autoregressive Terms
Pages 160-179

Chapter VIII Class Selection and Validation of Univariate Models
Pages 180-218

Chapter IX Class Selection and Validation of Multivariate Models
Pages 219-237

Chapter X Modeling River Flows
Pages 238-282

Chapter XI Some Additional Case Studies in Model Building
Pages 283-324

References
Pages 325-330

Index
Pages 331-334


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