Description

Book Synopsis
An accessible guide to the multivariate time series tools used in numerous real-world applications Multivariate Time Series Analysis: With R and Financial Applications is the much anticipated sequel coming from one of the most influential and prominent experts on the topic of time series.

Table of Contents

Preface xv

Acknowledgements xvii

1 Multivariate Linear Time Series 1

1.1 Introduction, 1

1.2 Some Basic Concepts, 5

1.3 Cross-Covariance and Correlation Matrices, 8

1.4 Sample CCM, 9

1.5 Testing Zero Cross-Correlations, 12

1.6 Forecasting, 16

1.7 Model Representations, 18

1.8 Outline of the Book, 22

1.9 Software, 23

Exercises, 23

2 Stationary Vector Autoregressive Time Series 27

2.1 Introduction, 27

2.2 VAR(1) Models, 28

2.3 VAR(2) Models, 37

2.4 VAR(p) Models, 41

2.5 Estimation, 44

2.6 Order Selection, 61

2.7 Model Checking, 66

2.8 Linear Constraints, 80

2.9 Forecasting, 82

2.10 Impulse Response Functions, 89

2.11 Forecast Error Variance Decomposition, 96

2.12 Proofs, 98

Exercises, 100

3 Vector Autoregressive Moving-Average Time Series 105

3.1 Vector MA Models, 106

3.2 Specifying VMA Order, 112

3.3 Estimation of VMA Models, 113

3.4 Forecasting of VMA Models, 126

3.5 VARMA Models, 127

3.6 Implications of VARMA Models, 139

3.7 Linear Transforms of VARMA Processes, 141

3.8 Temporal Aggregation of VARMA Processes, 144

3.9 Likelihood Function of a VARMA Model, 146

3.10 Innovations Approach to Exact Likelihood Function, 155

3.11 Asymptotic Distribution of Maximum Likelihood Estimates, 160

3.12 Model Checking of Fitted VARMA Models, 163

3.13 Forecasting of VARMA Models, 164

3.14 Tentative Order Identification, 166

3.15 Empirical Analysis of VARMA Models, 176

3.16 Appendix, 192

Exercises, 194

4 Structural Specification of VARMA Models 199

4.1 The Kronecker Index Approach, 200

4.2 The Scalar Component Approach, 212

4.3 Statistics for Order Specification, 220

4.4 Finding Kronecker Indices, 222

4.5 Finding Scalar Component Models, 226

4.6 Estimation, 237

4.7 An Example, 245

4.8 Appendix: Canonical Correlation Analysis, 259

Exercises, 262

5 Unit-Root Nonstationary Processes 265

5.1 Univariate Unit-Root Processes, 266

5.2 Multivariate Unit-Root Processes, 279

5.3 Spurious Regressions, 290

5.4 Multivariate Exponential Smoothing, 291

5.5 Cointegration, 294

5.6 An Error-Correction Form, 297

5.7 Implications of Cointegrating Vectors, 300

5.8 Parameterization of Cointegrating Vectors, 302

5.9 Cointegration Tests, 303

5.10 Estimation of Error-Correction Models, 313

5.11 Applications, 319

5.12 Discussion, 326

5.13 Appendix, 327

Exercises, 328

6 Factor Models and Selected Topics 333

6.1 Seasonal Models, 333

6.2 Principal Component Analysis, 341

6.3 Use of Exogenous Variables, 345

6.4 Missing Values, 357

6.5 Factor Models, 364

6.6 Classification and Clustering Analysis, 386

Exercises, 394

7 Multivariate Volatility Models 399

7.1 Testing Conditional Heteroscedasticity, 401

7.2 Estimation of Multivariate Volatility Models, 407

7.3 Diagnostic Checks of Volatility Models, 409

7.4 Exponentially Weighted Moving Average, 414

7.5 BEKK Models, 417

7.6 Cholesky Decomposition and Volatility Modeling, 420

7.7 Dynamic Conditional Correlation Models, 428

7.8 Orthogonal Transformation, 434

7.9 Copula-Based Models, 443

7.10 Principal Volatility Components, 454

Exercises, 461

Appendix A Review of Mathematics and Statistics 465

A.1 Review of Vectors and Matrices, 465

A.2 Least-Squares Estimation, 477

A.3 Multivariate Normal Distributions, 478

A.4 Multivariate Student-t Distribution, 479

A.5 Wishart and Inverted Wishart Distributions, 480

A.6 Vector and Matrix Differentials, 481

Index 489

Multivariate Time Series Analysis

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    A Hardback by Ruey S. Tsay

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      Publisher: John Wiley & Sons Inc
      Publication Date: 28/01/2014
      ISBN13: 9781118617908, 978-1118617908
      ISBN10: 1118617908

      Description

      Book Synopsis
      An accessible guide to the multivariate time series tools used in numerous real-world applications Multivariate Time Series Analysis: With R and Financial Applications is the much anticipated sequel coming from one of the most influential and prominent experts on the topic of time series.

      Table of Contents

      Preface xv

      Acknowledgements xvii

      1 Multivariate Linear Time Series 1

      1.1 Introduction, 1

      1.2 Some Basic Concepts, 5

      1.3 Cross-Covariance and Correlation Matrices, 8

      1.4 Sample CCM, 9

      1.5 Testing Zero Cross-Correlations, 12

      1.6 Forecasting, 16

      1.7 Model Representations, 18

      1.8 Outline of the Book, 22

      1.9 Software, 23

      Exercises, 23

      2 Stationary Vector Autoregressive Time Series 27

      2.1 Introduction, 27

      2.2 VAR(1) Models, 28

      2.3 VAR(2) Models, 37

      2.4 VAR(p) Models, 41

      2.5 Estimation, 44

      2.6 Order Selection, 61

      2.7 Model Checking, 66

      2.8 Linear Constraints, 80

      2.9 Forecasting, 82

      2.10 Impulse Response Functions, 89

      2.11 Forecast Error Variance Decomposition, 96

      2.12 Proofs, 98

      Exercises, 100

      3 Vector Autoregressive Moving-Average Time Series 105

      3.1 Vector MA Models, 106

      3.2 Specifying VMA Order, 112

      3.3 Estimation of VMA Models, 113

      3.4 Forecasting of VMA Models, 126

      3.5 VARMA Models, 127

      3.6 Implications of VARMA Models, 139

      3.7 Linear Transforms of VARMA Processes, 141

      3.8 Temporal Aggregation of VARMA Processes, 144

      3.9 Likelihood Function of a VARMA Model, 146

      3.10 Innovations Approach to Exact Likelihood Function, 155

      3.11 Asymptotic Distribution of Maximum Likelihood Estimates, 160

      3.12 Model Checking of Fitted VARMA Models, 163

      3.13 Forecasting of VARMA Models, 164

      3.14 Tentative Order Identification, 166

      3.15 Empirical Analysis of VARMA Models, 176

      3.16 Appendix, 192

      Exercises, 194

      4 Structural Specification of VARMA Models 199

      4.1 The Kronecker Index Approach, 200

      4.2 The Scalar Component Approach, 212

      4.3 Statistics for Order Specification, 220

      4.4 Finding Kronecker Indices, 222

      4.5 Finding Scalar Component Models, 226

      4.6 Estimation, 237

      4.7 An Example, 245

      4.8 Appendix: Canonical Correlation Analysis, 259

      Exercises, 262

      5 Unit-Root Nonstationary Processes 265

      5.1 Univariate Unit-Root Processes, 266

      5.2 Multivariate Unit-Root Processes, 279

      5.3 Spurious Regressions, 290

      5.4 Multivariate Exponential Smoothing, 291

      5.5 Cointegration, 294

      5.6 An Error-Correction Form, 297

      5.7 Implications of Cointegrating Vectors, 300

      5.8 Parameterization of Cointegrating Vectors, 302

      5.9 Cointegration Tests, 303

      5.10 Estimation of Error-Correction Models, 313

      5.11 Applications, 319

      5.12 Discussion, 326

      5.13 Appendix, 327

      Exercises, 328

      6 Factor Models and Selected Topics 333

      6.1 Seasonal Models, 333

      6.2 Principal Component Analysis, 341

      6.3 Use of Exogenous Variables, 345

      6.4 Missing Values, 357

      6.5 Factor Models, 364

      6.6 Classification and Clustering Analysis, 386

      Exercises, 394

      7 Multivariate Volatility Models 399

      7.1 Testing Conditional Heteroscedasticity, 401

      7.2 Estimation of Multivariate Volatility Models, 407

      7.3 Diagnostic Checks of Volatility Models, 409

      7.4 Exponentially Weighted Moving Average, 414

      7.5 BEKK Models, 417

      7.6 Cholesky Decomposition and Volatility Modeling, 420

      7.7 Dynamic Conditional Correlation Models, 428

      7.8 Orthogonal Transformation, 434

      7.9 Copula-Based Models, 443

      7.10 Principal Volatility Components, 454

      Exercises, 461

      Appendix A Review of Mathematics and Statistics 465

      A.1 Review of Vectors and Matrices, 465

      A.2 Least-Squares Estimation, 477

      A.3 Multivariate Normal Distributions, 478

      A.4 Multivariate Student-t Distribution, 479

      A.5 Wishart and Inverted Wishart Distributions, 480

      A.6 Vector and Matrix Differentials, 481

      Index 489

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