Extent:
Online-Ressource (XXXIII, 560 p. 65 illus., 28 illus. in color, digital)
Series:
Type of publication: Book / Working Paper
Language: English
Notes:
Description based upon print version of record
Recent Advances and Future Directions in Causality,Prediction, and Specification Analysis; Editor's Introduction; Contents; 1 Improving U.S. GDP Measurement: A Forecast Combination Perspective; 1 Introduction; 2 Combination Under Quadratic Loss; 2.1 Basic Results and Calibration; 2.2 On the Rationale for our Calibration; 3 Combination Under Minimax Loss; 4 Empirics; 4.1 A Combined U.S. GDP Series; 4.2 U.S. Recession and Volatility Regime Probabilities; 5 Extensions; 5.1 Vintage Data, Time-Varying Combining Weights, and Real-Time Analysis; 5.2 A Model of Measurement Error; 6 Conclusions
References2 Identification Without Exogeneity Under Equiconfounding in Linear Recursive Structural Systems; 1 Introduction; 2 Notation; 3 Equiconfounded Predictive Proxy and Response; 4 Equiconfounded Joint Causes and Response; 5 Equiconfounded Cause and Joint Responses; 6 Equiconfounding in Triangular Structures; 7 Discussion; 8 Conclusion; References; 3 Optimizing Robust Conditional Moment Tests: An Estimating Function Approach; 1 Introduction; 2 A Generalized RCM Test; 3 Examples: RCM Tests; 3.1 Conditional-Mean Context; 3.2 Conditional Mean-and-Variance Context
3.3 Conditional Quantile Context4 Optimization; 4.1 Parametric Optimality; 4.2 Semi-Parametric Optimality; 4.3 Computational Aspect; 5 Examples: Optimized Tests; 5.1 Conditional-Mean Context; 5.2 Conditional Mean-and-Variance Context; 5.3 Conditional Quantile Context; 6 Simulation; 7 Conclusions; References; 4 Asymptotic Properties of Penalized M Estimators with Time Series Observations; 1 Introduction; 2 Definitions and Examples; 3 Convergence Rate of the Penalized M Estimate; 4 Asymptotic Normality of Plug-In Penalized M Estimates; 5 Consistent Estimation of the Long-Run Variance
6 ConclusionReferences; 5 A Survey of Recent Advances in Forecast Accuracy Comparison Testing, with an Extension to Stochastic Dominance; 1 Introduction; 2 DM and Reality Check Tests; 2.1 The Case of Vanishing Estimation Error; 2.2 Bootstrap Critical Values for Recursive Estimation Schemes; 3 Extending the DM and Reality Check Tests to Forecast Interval Evaluation; 3.1 The Case of Known Distribution Function; 3.2 The Case of Unknown Distribution Function; 4 Stochastic Dominance: Predictive Evaluation Based on Distribution of Loss; 4.1 Motivation; 4.2 Setup; 4.3 Statistic
5 Concluding RemarksReferences; 6 New Directions in Information Matrix Testing: Eigenspectrum Tests; 1 Introduction; 1.1 Model Misspecification; 1.2 Specification Analysis for Logistic Regression; 1.3 Information Matrix Test; 1.4 Empirical Performance of the Information Matrix Test; 1.5 Nondirectional and Directional Tests; 1.6 Logistic Regression Modeling IMTs; 1.7 Generalized Information Matrix Test Theory; 2 Theory; 2.1 Information Matrix Equality; 2.2 The Null Hypothesis for a Generalized IMT; 2.3 Asymptotic Behavior of the Generalized IMT Statistic; 2.4 Classical IMT Family
2.5 Eigenspectrum GIMT Family
ISBN: 978-1-4614-1653-1 ; 978-1-4614-1652-4
Other identifiers:
10.1007/978-1-4614-1653-1 [DOI]
Source:
ECONIS - Online Catalogue of the ZBW
Persistent link: https://www.econbiz.de/10014016124