Business Data Analysis and Interpretation

Spring 2022 BUS 320 Syllabus

Subject to revision (last updated: Feb 17, 2022)

Contact information

Course description

This is an applied course that builds upon knowledge acquired from lower-division statistics coursework. It exposes students to the research and data analysis practices executed in the business world. A focus of this course is on generating reproducible analyses using the R programming language.

Prerequisites

Learning objectives

Course materials

Schedule

Date Topic
Feb 1 1: Introduction/R/RStudio due at 5 PM
Feb 8 2: Install R/RStudio and create a blog due at 5 PM
Feb 15 3: Data manipulation / descriptive analysis I due at 5 PM
Feb 22 4: Reading and writing data due at 5 PM
Mar 1 5: Data manipulation / descriptive analysis II due at 5 PM
Mar 8 6: Data manipulation / joining data due at 5 PM
Mar 15 7: Exploratory analysis / data visualization I due at 5 PM
Mar 29 8: Exploratory analysis / data visualization II due at 5 PM
Apr 5 9: Data visualization / storytelling due at 5 PM
Apr 12 10: Machine learning due at 5 PM
Apr 19 11: Inference / sampling due at 5 PM
Apr 26 12: Inference / bootstrapping due at 5 PM
May 3 13: Inference / hypothesis testing due at 5 PM
May 10 14: Assignment due at 5 PM
May 17 15: Assignment due at 5 PM

Grading

There are 1050 possible points in the course (50 are extra credit points). Your grade will be determined by your total points:

Grade Points
A 950
A- 900
B+ 870
B 830
B- 800
C+ 770
C 730
C- 700
D+ 670
D 600

Late submissions will not be accepted. Please do not ask.

Policies