ECON-UB 251 Econometrics I

SYLLABUS
Econometrics 

Course Description:

This course is designed to be a practical deep dive into Econometrics and Regression Analysis. Regression is one of the most powerful and useful tools when analyzing data. Econometrics, at it core, is about understanding the relationships between variables. In this course, we will go beyond prediction and statistical tests to begin to understand the causal relationship between variables and how to use data to make the best decisions possible.

This course will use Python, a popular high-level computer language that is widely used in finance, consulting, technology, and other parts of the business world.

Students should expect to leave this class with a strong understanding of how Econometrics is used in business and be able to effectively generate their own models in a variety of contexts.

Textbook:

Main text:

Introductory Econometrics: A Modern Approach by Jeffrey Wooldridge

Optional:

Mostly Harmless Econometrics: An Empiricist’s Companion by Joshua Angrist & Jorn-Steffan Pischke

Instructor:

Benjamin Zweig

Email: [email protected]

Office Hours: By appointment

Requirements

All students must have experience with statistics, as this course builds upon that knowledge. We also expect students to be familiar enough with programming to be able to analyze data in python.

Our one requirement is that you must bring a laptop computer to class. It should be your own computer, or at least one you can install new programs on. We will use it constantly in class, writing and correcting short programs.

 Course Schedule:

 

Topic

Subtopics

Topic 1

Introduction

● Statistics, Regression, Causality, and why it matters

● Python Review

Topic 2

Uses of Regression

● Prediction and conditional expectation

● Inference

● Decomposition of Variance

● Interpreting Regressions

Topic 3

Running Good Regressions

● Fit

● Unbiasedness and Validity

● Nonlinearities

Topic 4

Multiple Regression

● Interpreting Multiple Regression

● Omitted Variable Bias

● Attenuation Bias

Topic 5

Complex Relationships

● Categorical Variables

● Interactions

Topic 6

Flexible Models

● Nonparametric Models

● Nonlinear Least Squares

Topic 7

Discrete Choice Models

● Binary Dependent Variables

● Multinomial Models

● Ordinal Models

Topic 8

Causality

● Causal Frameworks

● A/B Testing

● Propensity Score Matching

Topic 9

Causal Models

● Instrumental Variables

● Regression Discontinuity

Topic 10

Panel Data Models

● Differences in Differences

● Synthetic Controls

Topic 11

Time Series

● Autoregressive Models

Topic 12

Representativeness

● Sampling Weights

● Quantile Regression

Deliverables and grades 

Graded work includes:

● Problem Sets. There will be several assignments over the course of the semester. They are a great way to develop your skills and come to the following class with questions about what you may not yet understand.

● Exams. Each exam will be non-cumulative but comprehensive. The focus of the exams will test your conceptual understandings of econometrics.

All your work should be clean and professional. 

Final grades will be computed from:

Class Participation 20%

Problem Sets 30%

Exams 50%

Policies

Ethics, disabilities, and many other things are governed by NYU and Stern policies. If you have questions about them, please ask.

On graded work: You may discuss assignments with anyone (in fact, we encourage it), but anything you submit, including your code, should be your own. Exams should be entirely your own work.

On disabilities: If you have a qualified disability that requires academic accommodation, please contact the Moses Center for Students with Disabilities (CSD, 212-998-4980) and ask them to send us a letter verifying your registration and outlining the accommodation they recommend. If you need to take an exam at the CSD, you must submit a completed Exam Accommodations Form to them at least one week prior to the scheduled exam time to be assured accommodation.

 

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