Title: Econometric Analysis of Panel Data
1Econometric Analysis of Panel Data
- William Greene
- Department of Economics
- Stern School of Business
2Econometric Analysis of Panel Data
3Panel Data Econometrics
- This is an intermediate level, Ph.D. course
in the area of Applied Econometrics dealing with
Panel Data. The range of topics covered in the
course will span a large part of econometrics
generally, though we are particularly interested
in those techniques as they are adapted to the
analysis of 'panel' or 'longitudinal' data sets.
Topics to be studied include specification,
estimation, and inference in the context of
models that include individual (firm, person,
etc.) effects.
4Why a Course on Panel Data?
- Microeconometrics and applications contemporary
broad field in economics/econometrics - Behavioral modeling
- Individual choice and response
- A platform for surveying econometric models and
methods most of the field - Various types
- Recent developments
5Prerequisites
- Econometrics I or equivalent Ph.D. level
introduction to econometrics - Mathematical statistics
- Matrix algebra
- We will do some proofs and derivations.
- We will examine many empirical applications.
- You will apply the tools developed in the course.
6Text Readings
- Main text Baltagi (2008) read chapters 1,2
- Recommended Greene (2012) read chapters 1,2,11
- Suggested Wooldridge (2002) read chapters
1,2,10 - Very interesting Cameron and Trivedi,
Microeconometrics (Cambridge University Press,
2005.)
7Course Applications
- Problem sets
- Panel data sets See the course website
- Software NLOGIT Version 5.0
- Other packages SAS, Stata
- Programming environments Gauss, Matlab,
Mathematica, R - Lab work
- Problem sets
- Software
- Questions and review as requested
8Course Requirements
- Problem sets 7 (20) Due 1. Statistics and
Regression Feb. 9 2. Fixed and Random
Effects Feb. 23 3. Instrumental Variables,
MDE, GMM March 8 4. Parameter Heterogeneity,
RPM, HLM March 29 5. Nonlinear Models April
12 6. Nonlinear Models for Panel Data April
24 7. Simulation, Latent Class, Random
Parameters May 3 (Note The last class
is May 3. Problem 7 is due with the final.) - Midterm, in class, (25) Thursday, March 22
- Final exam (35)
- Distributed Thursday, May 3, due Friday, May 11
- Please plan ahead
- Term paper/project Application of method(s)
developed in class to a live data set. Details
to be given in class. (20) - Enthusiasm
9Dates
No class April 26 (Th) No class March 13 (T),
March 15(TH) spring break Midterm Exam Thursday
March 22 Final Exam Period May 3 May 11
10http//pages.stern.nyu.edu/wgreene/Econometrics/P
anelDataEconometrics.htm
11Course Outline
12Econometric Analysis of Panel Data
13Econometrics Paradigm
- Theoretical foundations
- Microeconometrics and macroeconometrics
- Behavioral modeling
- Statistical foundations Econometric methods
- Mathematical elements the usual
- Model building the econometric model
- Mathematical elements
- The underlying truth is there one?
14Model Building in Econometrics
- Role of the assumptions
- Sharpness of inferences
- Parameterizing the model
- Nonparametric analysis
- Semiparametric analysis
- Parametric analysis
15Estimation Platforms
- Model based
- Kernels and smoothing methods (nonparametric)
- Moments and quantiles (semiparametric)
- Likelihood and M- estimators (parametric)
- Methodology based (?)
- Classical parametric and semiparametric
- Bayesian strongly parametric
16The Sample and Measurement
Population
Measurement
Theory
Characteristics Behavior Patterns Choices
17Classical Inference
Population
Measurement
Econometrics
Characteristics Behavior Patterns Choices
Imprecise inference about the entire population
sampling theory and asymptotics
18Bayesian Inference
Population
Measurement
Econometrics
Characteristics Behavior Patterns Choices
Sharp, exact inference about only the sample
the posterior density.
19Data Structures
- Observation mechanisms
- Passive, nonexperimental
- Active, experimental
- The natural experiment
- Data types
- Cross section
- Pure time series
- Panel longitudinal data
- Financial data
20Econometric Models
- Linear static and dynamic
- Discrete choice
- Censoring and truncation
- Structural models and demand systems
21Estimation Methods and Applications
- Least squares etc. OLS, GLS, LAD, quantile
- Maximum likelihood
- Formal ML
- Maximum simulated likelihood
- Robust and M- estimation
- Instrumental variables and GMM
- Simulation based estimation
- Bayesian estimation Markov Chain Monte Carlo
methods - Maximum simulated likelihood
- Semiparametric and nonparametric methods based on
kernels and approximations
22Where Do We Go From Here?
- Review of familiar classical procedures
- Fundamental, familiar regression extensions
common effects models - Endogeneity, instrumental variables, GMM
estimation - Dynamic models
- Models of heterogeneity
- Nonlinear models that carry forward the features
of the linear, static and dynamic common effects
models - Recent developments in non- and semiparametric
approaches