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Advances in Applied Econometrics: Celebrating Peter Schmidt's Legacy 2024 ed. [Kõva köide]

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This edited volume celebrates the profound legacy of Peter Schmidt, an eminent figure in econometric research. Originally featured as a Special Issue in Empirical Economics in 2023, this book gathers esteemed econometricians to honor Schmidt's influential work. His distinguished career encompassed pioneering contributions to various realms of econometrics, including time series and panel data econometrics, as well as stochastic frontier analysis. This Festschrift beautifully captures his synergy of theoretical innovation and empirical significance.

Written by distinguished econometricians, the volume presents the state-of-the-art in econometrics, traversing Schmidt's diverse interests. It spotlights his impact on applied econometrics and features 25 contributions on topics such as panel data econometrics, stochastic frontier analysis and efficiency/productivity measurement, time series methods, general applied econometrics, copulas, nonparametric methods, and limited dependent variable models. Readers will gain an overview of the state of econometrics through the lens of Schmidt's multifaceted expertise, exemplifying the enduring resonance of Schmidt's scholarly journey and his indelible impact on the field.

Chapter
1. Introduction.
Chapter
2. Robust Dynamic Spacetime Panel
Data Models Using -contamination: An Application to Crop Yields and Climate
Change.
Chapter
3. Unbiased Estimation of the OLS Covariance Matrix When the
Errors are Clustered.
Chapter
4. Refined GMM Estimators for Simultaneous
Equations Models with Network Interactions.
Chapter
5. Identification and
Estimation of Categorical Random Coefficient Models.
Chapter
6. Dynamic
Panel GMM Estimators with Improved Finite Sample Properties using Parametric
Restrictions for Dimension Reduction.
Chapter
7. Testing for Correlation
Between the Regressors and Factor Loadings in Heterogeneous Panels with
Interactive Effects.
Chapter
8. Assessing the Impacts of Pandemic and the
Increase in Minimum Down Payment Rate on Shanghai Housing Prices.
Chapter
9.
A Simple, Robust Test for Choosing the Level of Fixed Effects in Linear Panel
Data Models.
Chapter
10. Internal Adjustment Costs of Firm-specific Factors
and the Neoclassical Theory of the Firm.
Chapter
11. Proportional
Incremental Cost Probability Functions and Their Frontiers.
Chapter
12.
Hotelling Tubes, Confidence Bands and Conformal Inference.
Chapter
13.
Indirect Inference Estimation of Stochastic Production Frontier Models With
Skew-normal Noise.
Chapter
14. The Noise Error Component in Stochastic
Frontier Analysis.
Chapter
15. An Alternative Corrected Ordinary Least
Squares Estimator for the Stochastic Frontier Model.
Chapter
16.
Likelihood-based Inference for Dynamic Panel Data Models.
Chapter
17.
Approximating Long-memory Processes With Low-order Autoregressions:
Implications for Modeling Realized Volatility.
Chapter
18. Does Climate
Change Affect Economic Data?.
Chapter
19. Information Loss in Volatility
Measurement With Flat Price Trading.
Chapter
20. Forecasting in the Presence
of in-sample and Out-of-sample Breaks.
Chapter
21. Multivariate Models of
Commodity Futures Markets: A Dynamic Copula Approach.
Chapter
22.
Generalized Kernel Regularized Least Squares Estimator With Parametric Error
Covariance.
Chapter
23. Predicting Binary Outcomes Based on the Pair-copula
Construction.
Chapter
24. Public Subsidies and Innovation: a Doubly Robust
Machine Learning Approach Leveraging Deep Neural Networks.
Chapter
25.
DS-HECK: Double-lasso Estimation of Heckman Selection Model.
Chapter
26.
Simultaneity in Binary Outcome Models with an Application to Employment for
Couples.
Subal C Kumbhakar is a distinguished professor in economics at SUNY Binghamton, USA. He is a co-editor of the Springer journal Empirical Economics. He is a fellow of the Journal of Econometrics and a distinguished author of the Journal of Applied Econometrics. He holds an Honorary Doctorate degree from Gothenburg University, Sweden. He has extensively published in international journals in economics and econometrics.

Robin C. Sickles has published extensively in leading journals in economics and econometrics. He is a Fellow of the Journal of Econometrics, Elsevier Handbook Series in Economics, and International Association of Applied Econometrics and is a member of Conference on Research in Income and Wealth (NBER).



Hung-Jen Wang is a distinguished professor of National Taiwan University. His research interests are productivity and efficiency analysis, empirical macroeconomics, and monetary policy. He is an associate editor of the Journal of Productivity Analysis, Co-Editor of Taiwan Economics Forecast and Policy, and President of the Taiwan Economics Society.