State Space Modeling of Time Series [electronic resource] /

model's predictive capability? These are some of the questions that need to be answered in proposing any time series model construction method. This book addresses these questions in Part II. Briefly, the covariance matrices between past data and future realizations of time series are used to build a matrix called the Hankel matrix. Information needed for constructing models is extracted from the Hankel matrix. For example, its numerically determined rank will be the di­ mension of the state model. Thus the model dimension is determined by the data, after balancing several sources of error for such model construction. The covariance matrix of the model forecasting error vector is determined by solving a certain matrix Riccati equation. This matrix is also the covariance matrix of the innovation process which drives the model in generating model forecasts. In these model construction steps, a particular model representation, here referred to as balanced, is used extensively. This mode of model representation facilitates error analysis, such as assessing the error of using a lower dimensional model than that indicated by the rank of the Hankel matrix. The well-known Akaike's canonical correlation method for model construc­ tion is similar to the one used in this book. There are some important differ­ ences, however. Akaike uses the normalized Hankel matrix to extract canonical vectors, while the method used in this book does not normalize the Hankel ma­ trix.

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Main Authors: Aoki, Masanao. author., SpringerLink (Online service)
Format: Texto biblioteca
Language:eng
Published: Berlin, Heidelberg : Springer Berlin Heidelberg, 1987
Subjects:Operations research., Decision making., Economic theory., Economics., Economic Theory/Quantitative Economics/Mathematical Methods., Operation Research/Decision Theory.,
Online Access:http://dx.doi.org/10.1007/978-3-642-96985-0
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id KOHA-OAI-TEST:203924
record_format koha
institution COLPOS
collection Koha
country México
countrycode MX
component Bibliográfico
access En linea
En linea
databasecode cat-colpos
tag biblioteca
region America del Norte
libraryname Departamento de documentación y biblioteca de COLPOS
language eng
topic Operations research.
Decision making.
Economic theory.
Economics.
Economic Theory/Quantitative Economics/Mathematical Methods.
Operation Research/Decision Theory.
Operations research.
Decision making.
Economic theory.
Economics.
Economic Theory/Quantitative Economics/Mathematical Methods.
Operation Research/Decision Theory.
spellingShingle Operations research.
Decision making.
Economic theory.
Economics.
Economic Theory/Quantitative Economics/Mathematical Methods.
Operation Research/Decision Theory.
Operations research.
Decision making.
Economic theory.
Economics.
Economic Theory/Quantitative Economics/Mathematical Methods.
Operation Research/Decision Theory.
Aoki, Masanao. author.
SpringerLink (Online service)
State Space Modeling of Time Series [electronic resource] /
description model's predictive capability? These are some of the questions that need to be answered in proposing any time series model construction method. This book addresses these questions in Part II. Briefly, the covariance matrices between past data and future realizations of time series are used to build a matrix called the Hankel matrix. Information needed for constructing models is extracted from the Hankel matrix. For example, its numerically determined rank will be the di­ mension of the state model. Thus the model dimension is determined by the data, after balancing several sources of error for such model construction. The covariance matrix of the model forecasting error vector is determined by solving a certain matrix Riccati equation. This matrix is also the covariance matrix of the innovation process which drives the model in generating model forecasts. In these model construction steps, a particular model representation, here referred to as balanced, is used extensively. This mode of model representation facilitates error analysis, such as assessing the error of using a lower dimensional model than that indicated by the rank of the Hankel matrix. The well-known Akaike's canonical correlation method for model construc­ tion is similar to the one used in this book. There are some important differ­ ences, however. Akaike uses the normalized Hankel matrix to extract canonical vectors, while the method used in this book does not normalize the Hankel ma­ trix.
format Texto
topic_facet Operations research.
Decision making.
Economic theory.
Economics.
Economic Theory/Quantitative Economics/Mathematical Methods.
Operation Research/Decision Theory.
author Aoki, Masanao. author.
SpringerLink (Online service)
author_facet Aoki, Masanao. author.
SpringerLink (Online service)
author_sort Aoki, Masanao. author.
title State Space Modeling of Time Series [electronic resource] /
title_short State Space Modeling of Time Series [electronic resource] /
title_full State Space Modeling of Time Series [electronic resource] /
title_fullStr State Space Modeling of Time Series [electronic resource] /
title_full_unstemmed State Space Modeling of Time Series [electronic resource] /
title_sort state space modeling of time series [electronic resource] /
publisher Berlin, Heidelberg : Springer Berlin Heidelberg,
publishDate 1987
url http://dx.doi.org/10.1007/978-3-642-96985-0
work_keys_str_mv AT aokimasanaoauthor statespacemodelingoftimeserieselectronicresource
AT springerlinkonlineservice statespacemodelingoftimeserieselectronicresource
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spelling KOHA-OAI-TEST:2039242018-07-30T23:32:38ZState Space Modeling of Time Series [electronic resource] / Aoki, Masanao. author. SpringerLink (Online service) textBerlin, Heidelberg : Springer Berlin Heidelberg,1987.engmodel's predictive capability? These are some of the questions that need to be answered in proposing any time series model construction method. This book addresses these questions in Part II. Briefly, the covariance matrices between past data and future realizations of time series are used to build a matrix called the Hankel matrix. Information needed for constructing models is extracted from the Hankel matrix. For example, its numerically determined rank will be the di­ mension of the state model. Thus the model dimension is determined by the data, after balancing several sources of error for such model construction. The covariance matrix of the model forecasting error vector is determined by solving a certain matrix Riccati equation. This matrix is also the covariance matrix of the innovation process which drives the model in generating model forecasts. In these model construction steps, a particular model representation, here referred to as balanced, is used extensively. This mode of model representation facilitates error analysis, such as assessing the error of using a lower dimensional model than that indicated by the rank of the Hankel matrix. The well-known Akaike's canonical correlation method for model construc­ tion is similar to the one used in this book. There are some important differ­ ences, however. Akaike uses the normalized Hankel matrix to extract canonical vectors, while the method used in this book does not normalize the Hankel ma­ trix.1 Introduction -- 2 The Notion of State -- 3 Representation of Time Series -- 3.1 Time Domain Representation -- 3.2 Frequency Domain Representation -- 4 State Space and ARMA Representation -- 4.1 State Space Models -- 4.2 Unit Roots -- 4.3 Conversion to State Space Representation -- 5 Properties of State Space Models -- 5.1 Observability -- 5.2 Covariance and Impulse Response Matrices -- 5.3 The Hankel Matrix -- 5.4 System Parameters and Innovation Models -- 5.5 Singular Value Decomposition -- 5.6 Balanced Realization of State Space Model -- 5.7 Hankel Norm of a Transfer Function -- 5.8 Singular Value Decomposition in the z-Domain -- 6 Innovation Processes -- 6.1 Cholesky Decomposition and Innovations -- 6.2 Orthogonal Projections -- 7 Kalman Filters -- 7.1 Innovation Models -- 7.2 Kalman Filters -- 7.3 Causal Invertibility and Innovation -- 7.4 Likelihood Functions and Identification -- 7.5 A Non-Iterative Algorithm for Riccati Equations -- 7.6 Forecasting Equations -- 8 State Vectors and Optimality Measures -- 8.1 State Vectors -- 8.2 Optimality Measures -- 9 Compution of System Matrices -- 9.1 System Matrices -- 9.2 Balanced Models for Scalar Time Series -- 9.3 Prediction Error Analysis -- 9.4 Non-Stationary Models -- 9.5 Rescaling and Other Transformation of Variables -- 9.6 Dynamic Multipliers -- 9.7 Numerical Examples -- 10 Approximate Models and Error Analysis -- 10.1 Structural Sensitivity -- 10.2 Error Norms -- 10.3 Error Propagation -- 10.4 Some Statistical Aspects -- 11 Numerical Examples -- 11.1 Chemical Process Yields -- 11.2 IBM Stock Prices -- 11.3 Canadian GNP and Money Data -- 11.4 Germany -- 11.5 United Kingdom -- 11.6 Combined Models for the United Kingdom and Germany -- 11.7 Japan -- 11.8 Japan-US Interactions -- 11.9 The United States of America -- 11.10 Comparison with VAR Models -- Appendices -- A.1 Differences Equations -- First Order Stable Equations -- First Order Unstable Equations -- Second Order Equations -- State Space Method -- A.2 Geometry of Weakly Stationary Stochastic Sequences -- A.3 The z-Transform -- A. 4 Discrete and Continuous Time System Correspondences -- A.5 Calculation of the Inverse -- A. 6 Some Useful Relations for Matrix Quadratic Forms -- A.7 Spectral Decomposition Representation -- A. 8 Computation of Sample Covariance Matrices -- A.9 Vector Autoregressive Models -- A. 10 Properties of Symplectic Matrices -- A. 11 Common Factors in ARMA Models -- A. 12 Singular Value Decomposition Theorem -- A. 13 Hankel Matrices -- A. 14 Spectrum and Factorization -- A. 15 Intertemporal Optimization by Dynamic Programming -- A. 16 Solution of Scalar Riccati Equations -- A. 17 Time Series from Intertemporal Optimization -- A. 18 Time Series from Rational Expectations Models -- A. 19 Data Sources -- References.model's predictive capability? These are some of the questions that need to be answered in proposing any time series model construction method. This book addresses these questions in Part II. Briefly, the covariance matrices between past data and future realizations of time series are used to build a matrix called the Hankel matrix. Information needed for constructing models is extracted from the Hankel matrix. For example, its numerically determined rank will be the di­ mension of the state model. Thus the model dimension is determined by the data, after balancing several sources of error for such model construction. The covariance matrix of the model forecasting error vector is determined by solving a certain matrix Riccati equation. This matrix is also the covariance matrix of the innovation process which drives the model in generating model forecasts. In these model construction steps, a particular model representation, here referred to as balanced, is used extensively. This mode of model representation facilitates error analysis, such as assessing the error of using a lower dimensional model than that indicated by the rank of the Hankel matrix. The well-known Akaike's canonical correlation method for model construc­ tion is similar to the one used in this book. There are some important differ­ ences, however. Akaike uses the normalized Hankel matrix to extract canonical vectors, while the method used in this book does not normalize the Hankel ma­ trix.Operations research.Decision making.Economic theory.Economics.Economic Theory/Quantitative Economics/Mathematical Methods.Operation Research/Decision Theory.Springer eBookshttp://dx.doi.org/10.1007/978-3-642-96985-0URN:ISBN:9783642969850