Course Detail (Course Description By Faculty)

Business Statistics (41000)

This course covers fundamental statistical concepts and basic computational tools in data analysis. The goal is to learn how to perform descriptive and predictive data analysis based on real datasets. This course also serves as a quantitative foundation for Chicago Booth elective courses in marketing, finance, economics and more advanced courses in data science.

The topics to be covered are: (1) descriptive data analysis, and data visualization; (2) statistical modeling and inference, bootstrap; (3) regression analysis: linear, logistic regression, (4) model fitting and diagnostics; (5) basic predictive tools in machine learning.

If you have a weak math background, math review course prior to start of class is recommended.

Business Statistics or Applied Regression?
Please take the pre-MBA exam to figure out which class would be a better fit. 
You can access the exam and related materials from the canvas site below:
https://canvas.uchicago.edu/courses/36612

There are no required texts for the course.
Based on homework, a mid-term, and final exam.  No pass/fail grades.  No auditors.
  • Mandatory attendance week 1
  • No auditors
  • No pass/fail grades
Description and/or course criteria last updated: June 02 2023
SCHEDULE
  • Winter 2024
    Section: 41000-03
    T 8:30 AM-11:30 AM
    Harper Center
    C10
    In-Person Only
  • Winter 2024
    Section: 41000-81
    T 6:00 PM-9:00 PM
    Gleacher Center
    304
    In-Person Only

Business Statistics (41000) - Liang, Tengyuan>>

This course covers fundamental statistical concepts and basic computational tools in data analysis. The goal is to learn how to perform descriptive and predictive data analysis based on real datasets. This course also serves as a quantitative foundation for Chicago Booth elective courses in marketing, finance, economics and more advanced courses in data science.

The topics to be covered are: (1) descriptive data analysis, and data visualization; (2) statistical modeling and inference, bootstrap; (3) regression analysis: linear, logistic regression, (4) model fitting and diagnostics; (5) basic predictive tools in machine learning.

If you have a weak math background, math review course prior to start of class is recommended.

Business Statistics or Applied Regression?
Please take the pre-MBA exam to figure out which class would be a better fit. 
You can access the exam and related materials from the canvas site below:
https://canvas.uchicago.edu/courses/36612

There are no required texts for the course.
Based on homework, a mid-term, and final exam.  No pass/fail grades.  No auditors.
  • Mandatory attendance week 1
  • No auditors
  • No pass/fail grades
Description and/or course criteria last updated: June 02 2023
SCHEDULE
  • Winter 2024
    Section: 41000-03
    T 8:30 AM-11:30 AM
    Harper Center
    C10
    In-Person Only
  • Winter 2024
    Section: 41000-81
    T 6:00 PM-9:00 PM
    Gleacher Center
    304
    In-Person Only