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bfi-reu-2019's Introduction

Numerical Optimization in Python (BFI REU 2019)

Session 1:

Session 2:

Potentially Useful Resources

Python Resources

The following are good general references for learning topics in data science and economics with Python.

Also, take a look at the material for a class that was previously taught:

Pandas Resources

Misc

Econometrics Textbooks

Here are a few econometrics textbooks that I find helpful and recommend.

  • A Guide to Econometrics, by Peter Kennedy. This is a great econometrics book. It's not a textbook. Rather, it's a guide that provides a lot of of "big-picture" discussion of various econometric procedures. It's a nice companion to another textbook. It has very few equations and rather focuses on discussing the ideas behind different techniques and procedures.
  • Econometrics, by Fumio Hayashi. This is the book that I mentioned that takes the unique pedogogical approach of deriving most common econometric procedures as special cases of the generalized method of moments (GMM). The idea is that if you first learn GMM, then you can learn many other techniques better and quicker by understanding how they can be derived from the fundamental principles in GMM.
  • Econometric Analysis of Cross Section and Panel Data, by Jeffrey M Wooldridge If you're interested in pursuing graduate school in economics, this is a highly regarded textbook. As the title implies, there is some emphasis on panel data models (which are quite important in many fields).
  • Introduction to Econometrics (3rd ed.), by Stock and Watson A good introduction to econometrics. Many undergraduate introductory econometrics courses use this book. (I assume that most of you have this book already.)
  • Structural Macroeconometrics (2nd Ed.), by DeJong and Dave I have found this book to be very useful. If you're interested in macroeconomics, this is a nice textbook to read through.

Learning Git and GitHub

LaTeX Resources

R Basics

Data Wrangling and Data Science in R

Pandas and R

Pandas is a widely used Python package for data analysis. It serves as a useful comparison for similar R packages.

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