LINEAR FIXED- AND RANDOM-EFFECTS MODELS
- Linear model with panel-level effects and i.i.d. errors
- Linear model with panel-level effects and AR(1) errors
- GLS and ML estimators
- Difference in differences (DID) estimation
- Heterogeneous DID estimation
- Robust and cluster–robust standard errors
- Multiway clustering
- HC2 with degrees-of-freedom adjustment
- Wildbootstrap confidence intervals and inference
- Multiple imputation
- Bayesian estimation
Video – Heterogeneous difference in differences
Video – New features in robust inference for linear models
Video – Wild cluster bootstrap for linear regression
RANDOM-EFFECTS REGRESSION FOR BINARY, ORDINAL, CATEGORICAL, AND COUNT-DEPENDENT VARIABLES
- Probit
- Logistic regression
- Complementary log-log regression
- Ordered logistic regression
- Ordered probit regression
- Multinomial logistic regression
- Interval regression
- Tobit
- Poisson regression (Gaussian or gamma random-effects)
- Negative binomial regression
- Robust standard errors with (*) regressions
- Bayesian estimation
CONDITIONAL FIXED-EFFECTS REGRESSION FOR BINARY, CATEGORICAL, AND COUNT-DEPENDENT VARIABLES
- Multinomial logistic regression
- Logit regression
- Poisson regression
- Negative binomial regression
TWO-STAGE LEAST-SQUARES PANEL-DATA ESTIMATORS
- Between-2SLS estimator
- Within-2SLS estimator
- Balestra–Varadharajan–Krishnakumar G2SLS estimator
- Baltagi EC2SLS estimator
- All with balanced or exogenously balanced panels
- Robust and cluster–robust standard errors
- Multiway clustering
- HC2 with degrees-of-freedom adjustment
- Wildbootstrap confidence intervals and inference
Video – Wild cluster bootstrap for linear regression
RANDOM-EFFECTS REGRESSION WITH SAMPLE SELECTION
RANDOM-EFFECTS EXTENDED REGRESSION MODELS
- Combine endogeneity, Heckman-style selection, and treatment effects
- Linear regression
- Interval regression, including tobit
- Probit regression
- Ordered probit regression
- Exogenous or endogenous treatment assignment
- Binary treatment–untreated/treated
- Ordinal treatment levels–0 doses, 1 dose, 2 doses, etc.
- Endogenous selection using probit or tobit
- All standard postestimation commands available, including predict and margins
REGRESSORS CORRELATED WITH INDIVIDUAL-LEVEL EFFECTS
- Hausman–Taylor instrumental-variables estimators
- Amemiya–MaCurdy instrumental-variables estimators
- Robust and cluster–robust standard errors
- Multiway clustering
- HC2 with degrees-of-freedom adjustment
- Wildbootstrap confidence intervals and inference
Video – Wild cluster bootstrap for linear regression
Panel-corrected standard errors (PCSE) for linear cross-sectional models
Swamy’s random-coefficients regression
STOCHASTIC FRONTIER MODELS
- Time-invariant model
- Time-varying decay model
- Battese–Coelli parameterization of time effects
- Estimates of technical efficiency and inefficiency
SPECIFICATION TESTS
- Hausman specification test
- Breusch and Pagan Lagrange multiplier test for random effects
PANEL-DATA UNIT-ROOT TESTS
- Im–Pesaran–Shin
- Levin–Lin–Chu
- Hadri
- Breitung
- Fisher-type (combining p-values)
- Harris–Tzavalis
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SUMMARY STATISTICS AND TABULATIONS
- Statistics within and between panels
- Pattern of panel participation
PANEL-DATA LINE PLOTS
- Graphs by panel
- Overlaid panels
GEE ESTIMATION OF GENERALIZED LINEAR MODELS (GLMS)
- Six distribution families
- Nine links
- Seven correlation structures
- Specific models include:
- Probit model with panel-correlation structure
- Poisson model with panel-correlation structure
LINEAR DYNAMIC PANEL-DATA ESTIMATORS
- Arellano–Bond estimator
- Arellano–Bover/Blundell–Bond system
- Opening, closing, and embedded gaps
- Serially correlated disturbances
- Complete control over instrument list
- Predetermined variables
- Tests for autocorrelation and of overidentifying restrictions
RANDOM-EFFECTS PARAMETRIC SURVIVAL MODELS
- Weibull, exponential, lognormal, loglogistic, or gamma models
- Robust and cluster–robust standard errors
- Multiway clustering
- HC2 with degrees-of-freedom adjustment
- Wildbootstrap confidence intervals and inference
- Bayesian estimation
Video – New features in robust inference for linear models
Video – Wild cluster bootstrap for linear regression
MULTILEVEL MIXED-EFFECTS MODELS
POPULATION-AVERAGED REGRESSION
- Complementary log-log regression
- Generalized estimating equations
- Logit regression
- Negative binomial regression
- Poisson regression
- Probit regression
- Linear models regression
STATIONARITY TESTS
- Panel-data unit-root tests
- Cointegration tests for nonstationary process
- Kao, Pedroni, or Westerlund tests
- Include panel-specific means or panel-specific time trends
POSTESTIMATION SELECTOR
- View and run all postestimation features for your command
- Automatically updated as estimation commands are run
FACTOR VARIABLES
- Automatically create indicators based on categorical variables
- Form interactions among discrete and continuous variables
- Include polynomial terms
- Perform contrasts of categories/levels
MARGINAL ANALYSIS
- Estimated marginal means
- Marginal and partial effects
- Average marginal and partial effects
- Least-squares means
- Predictive margins
- Adjusted predictions, means, and effects
- Works with multiple outcomes simultaneously
- Contrasts of margins
- Pairwise comparisons of margins
- Profile plots
- Graphs of margins and marginal effects