Skip to main content
Print this page
Select a Catalog
Walsh College Academic Catalog 2024-2025
Walsh College Transfer Resources
Walsh College Academic Catalog 2023-2024
Archive Catalogs
Catalog Search
Search Options
Entire Catalog
Programs
Courses
Search
http://walshcollege.smartcatalogiq.com/
12b51007-a6b1-4247-813a-121c71f218ae
https://searchproxy.smartcatalogiq.com/search
5f3767c5-fc1c-417c-b354-5ce5e1619288
course
/Institutions/Walsh-College/json/2022-2023/Walsh-College-Catalog-2022-2023-local.json
/Institutions/Walsh-College/json/2022-2023/Walsh-College-Catalog-2022-2023.json
Contents
Welcome to Walsh College
Academic Calendar & Important Dates
General Information
Academic Policies and Requirements
Walsh College Degree Programs
Undergraduate Degree Programs
Graduate Degree Programs
Dual Degree Programs
Graduate Certificates
Doctoral Degree Programs
Courses
ACC - Accounting
BL - Business Law
BTC - Business & Technology
COM - Communications
DCT - Doctoral
DIS - Dissertation
ECN - Economics
ENG - English
FIN - Finance
IDS - Interdisciplinary
IT - Information Technology
KET - Kettering University Courses
MGT - Management
MKT - Marketing
MTH - Math
QM - Quantitative Methods
200
300
500
QM 501
QM 504
QM 505
QM 520
600
RES - Research
TAX - Taxation
Walsh College Leadership
Walsh College Faculty
Walsh College Board of Trustees
Walsh College History
Notice of Nondiscrimination
Catalog Links
Catalog Home
Site Map
All Catalogs
QM 501
INTRODUCTION TO BUSINESS ANALYTICS
This course covers the fundamentals of statistics. It starts with defining data in the context of decision-making situations. Diverse types of data are explored focusing on data classification schemes, data summary statistics, and basic data graphical visualization. The concept of probability is covered with a singular and laser focus on normal and binomial probability distributions. The theory of sampling and sampling distribution is presented solving practical decision-making problems. The last part of the course focuses on confidence interval and test of hypothesis and their applications to data driven decision-making.
Credits
1
Prerequisite
None