Document Type
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BL
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Record Number
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840352
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Main Entry
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Paolella, Marc S.
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Title & Author
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Linear models and time-series analysis : : regression, ANOVA, ARMA and GARCH /\ Marc S. Paolella, Department of Banking and Finance, University of Zurich, Switzerland.
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Publication Statement
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Hoboken, NJ :: John Wiley & Sons, Inc.,, 2019.
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, ©2019
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Page. NO
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1 online resource (xvi, 880 pages)
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ISBN
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1119431859
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: 1119431980
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: 1119432030
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: 9781119431855
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: 9781119431985
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: 9781119432036
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9781119431909
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Bibliographies/Indexes
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Includes bibliographical references and index.
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Contents
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Cover; Title Page; Copyright; Contents; Preface; Part I Linear Models: Regression and ANOVA; Chapter 1 The Linear Model; 1.1 Regression, Correlation, and Causality; 1.2 Ordinary and Generalized Least Squares; 1.2.1 Ordinary Least Squares Estimation; 1.2.2 Further Aspects of Regression and OLS; 1.2.3 Generalized Least Squares; 1.3 The Geometric Approach to Least Squares; 1.3.1 Projection; 1.3.2 Implementation; 1.4 Linear Parameter Restrictions; 1.4.1 Formulation and Estimation; 1.4.2 Estimability and Identifiability; 1.4.3 Moments and the Restricted GLS Estimator; 1.4.4 Testing With h=0
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Part I: Linear models: Regression and Anova. The linear model ; Fixed effects ANOVA models ; Introduction to random and mixed effect models -- Part II: Time-Series: ARMAX processes. The AR(1) model ; Regression extensions: AR(1) errors and time-varying parameters ; Autoregressive and moving average processes ; ARMA processes ; Correlograms ; ARMA model identification -- Part III: Modeling financial asset returns. Univariate GARCH modeling ; Risk prediction and portfolio optimization ; Multivariate t distributions ; Weighted likelihood ; Multivariate mixture distributions -- Part IV: Appendices. Appendix A: Distribution of quadratic forms ; Appendix B. Momenta of ratios of quadratic forms ; Appendix C: Some useful multivariate distribution theory ; Appendix D: Introducing the SAS programming language.
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1.4.5 Testing With Nonzero h1.4.6 Examples; 1.4.7 Confidence Intervals; 1.5 Alternative Residual Calculation; 1.6 Further Topics; 1.7 Problems; 1.A Appendix: Derivation of the BLUS Residual Vector; 1.B Appendix: The Recursive Residuals; 1.C Appendix: Solutions; Chapter 2 Fixed Effects ANOVA Models; 2.1 Introduction: Fixed, Random, and Mixed Effects Models; 2.2 Two Sample t-Tests for Differences in Means; 2.3 The Two Sample t-Test with Ignored Block Effects; 2.4 One-Way ANOVA with Fixed Effects; 2.4.1 The Model; 2.4.2 Estimation and Testing; 2.4.3 Determination of Sample Size
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2.4.4 The ANOVA Table2.4.5 Computing Confidence Intervals; 2.4.6 A Word on Model Assumptions; 2.5 Two-Way Balanced Fixed Effects ANOVA; 2.5.1 The Model and Use of the Interaction Terms; 2.5.2 Sums of Squares Decomposition Without Interaction; 2.5.3 Sums of Squares Decomposition With Interaction; 2.5.4 Example and Codes; Chapter 3 Introduction to Random and Mixed Effects Models; 3.1 One-Factor Balanced Random Effects Model; 3.1.1 Model and Maximum Likelihood Estimation; 3.1.2 Distribution Theory and ANOVA Table; 3.1.3 Point Estimation, Interval Estimation, and Significance Testing
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3.1.4 Satterthwaite's Method3.1.5 Use of SAS; 3.1.6 Approximate Inference in the Unbalanced Case; 3.1.6.1 Point Estimation in the Unbalanced Case; 3.1.6.2 Interval Estimation in the Unbalanced Case; 3.2 Crossed Random Effects Models; 3.2.1 Two Factors; 3.3 Nested Random Effects Models; 3.3.1 Two Factors; 3.3.1.3 Mixed Model Case; 3.3.2 Three Factors; 3.3.2.1 All Effects Random; 3.3.2.2 Mixed: Classes Fixed; 3.3.2.3 Mixed: Classes and Subclasses Fixed; 3.4 Problems; 3.A Appendix: Solutions; Part II Time Series Analysis: ARMAX Processes; Chapter 4 The AR(1) Model; 4.1 Moments and Stationarity
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4.2 Order of Integration and Long-Run Variance4.3 Least Squares and ML Estimation; 4.3.1 OLS Estimator of a; 4.3.2 Likelihood Derivation I; 4.3.3 Likelihood Derivation II; 4.3.4 Likelihood Derivation III; 4.3.5 Asymptotic Distribution; 4.4 Forecasting; 4.5 Small Sample Distribution of the OLS and ML Point Estimators; 4.6 Alternative Point Estimators of a; 4.6.1 Use of the Jackknife for Bias Reduction; 4.6.2 Use of the Bootstrap for Bias Reduction; 4.6.3 Median-Unbiased Estimator; 4.6.4 Mean-Bias Adjusted Estimator; 4.6.5 Mode-Adjusted Estimator; 4.6.6 Comparison
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Subject
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Linear models (Statistics)
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Subject
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Time-series analysis.
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Subject
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Linear models (Statistics)
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Subject
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MATHEMATICS-- Calculus.
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Subject
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MATHEMATICS-- Mathematical Analysis.
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Subject
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Time-series analysis.
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Dewey Classification
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515.5/5
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LC Classification
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QA280.P36 2019
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