Welcome to Economics 421: Introduction to Econometrics (Spring 2019) at the University of Oregon (w/ Ed Rubin).
For information on the course specifics, please see the syllabus.
The slides below (linked by their topic) are .html files that will only work properly if you are connected to the internet. If you're going off grid, grab the PDFs (you'll miss out on gifs and interactive plots, but the equations will render correctly). I create the slides with xaringan
in R. Thanks go to Grant McDermott for helping/pushing me to get going with xaringan
.
- The introduction to "Introduction to Econometrics"
PDF | .Rmd - Review of key math/stat/metrics topics
Density functions, deriving the OLS estimators, properties of estimators, statistical inference (standard errors, confidence intervals, hypothesis testing), simulation
PDF | PDF (no pauses) | .Rmd - Review of key metrics topics
OLS properties and inference
PDF | PDF (no pauses) | .Rmd - Heteroskedasticity
Step 1 in relaxing our assumptions: non-constant variance in our disturbances. How can we test this assumption? What are the implications of violations?
PDF | PDF (no pauses) | .Rmd - Heteroskedasticity II
What do we do when we detect heteroskedasticity? Model specification, weighted least squares (WLS), and heteroskedasticity-robust standard errors (plus a simulation).
PDF | PDF (no pauses) | .Rmd - Consistency
Moving from small-sample properties to asymptopia (i.e., as N gets big).
PDF | PDF (no pauses) | .Rmd - Time series
What happens when you have repeated observations on an individual?
PDF | PDF (no pauses) | .Rmd - Autocorrelated disturbances
Implications, testing, and estimation. Also: introductionggplot2
and user-defined functions.
PDF | .Rmd - Nonstationarity
Introduciton, implications for OLS, testing, and estimation. Also: in-class exercise for model selection.
PDF | .Rmd - Causality
Introduction to causality and the Neymam-Rubin causal model. Also: Recap of in-class model-selection exercise.
PDF | .Rmd - Instrumental Variables
Review the Neymam-Rubin causal model; introduction to instrumental variables (IV) and two-stage least squares (2SLS). Applications to causal inference and measurement error. Venn diagrams.
PDF | .Rmd
- Problem set 1: Review of OLS
PDF | Data | Solutions - Problem set 2: Unbiasedness, consistency, and heteroskedasticity
PDF | Data | Solutions - Problem set 3: Time series and autocorrelation
PDF | Data | Solutions - Problem set 4: Nonstationarity, causality, and instrumental variables
PDF | Data | Solutions
Midterm review materials: Review topics | Review problems | Previous midterm | Previous midterm's solutions
Note: We will not provide solutions for the review problems.
- Topics: topics that were fair game for the exam
- Review questions: no solutions; just review questions
- Previous final: the actual exam