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ECON 378

Statistics for Economists

Economics College of Family, Home, and Social Sciences

Course Description

Introduction to data description, visualization, and analysis, including underlying mathematics of probability theory and statistics. Topics include: probability, random variables, density and distribution functions, estimation, and hypothesis testing.

When Taught

All Semesters/Terms

Grade Rule

Grade Rule 8: A, B, C, D, E, I (Standard grade rule)

Min

3

Fixed

3

Fixed

3

Fixed

0

Note

If you plan to complete Econ 110 and/or Math 112 through Independent Study, this class cannot be registered for until the Independent Study course is completed.

Title

Econ 378 students will be able to:

Learning Outcome

Demonstrate an understanding of the basic principles and terminology of probability, simple distribution theory, statistics, and matrix algebra in preparation for a successful introduction to econometric methods in Economics 388. These principles and concepts include:  The language, intuition, and notation necessary to understand basic approaches to probability, including basic combinatoric counting techniques, the additive and multiplicative laws of probability, conditional probability and independence, the law of total probability, and Bayes' rule, and to solve basic probability problems using these techniques. Random variables, both univariate and bivariate, including: distribution functions, density functions, conditional density, expected values, variance, covariance, and correlation coefficients.  Specific examples of useful random variables. Statistics and sampling distributions. Law of Large Numbers and Central Limit Theorem.  Parameter estimators and their derivation using the Method of Moments and Method of Maximum Likelihood. Statistical inference, including the idea of sampling error, sampling distributions, the construction of confidence intervals, and formal hypothesis tests. Basic matrix theory and the properties of matrix operations, including addition, subtraction, matrix products, matrix determinants, and matrix inversion. Use these statistical techniques to analyze data in diverse applications.    Recognize the usefulness of statistics in a variety of career fields.