HADM 4750

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HADM 4750

Course information provided by the 2023-2024 Catalog.

The world is becoming increasingly data driven. In this context, the ability to leverage machine learning techniques to extract value from data is vital across many businesses, including the hospitality industry. This course is designed to meet the emerging need of this sector. This course aims to convey core principles of machine learning and hands-on applications of on solving real business problems. This course emphasizes on how to draw managerial insights and support business decisions from data. The methods that would be covered include linear regression, logistic regression, classification trees, clustering, and neural networks. This course also explains concepts including bias-variance trade-off, model interpretability, cross-validation, prescriptive analytics, and ethical concerns of machine learning.


Prerequisites/Corequisites Prerequisite: HADM 2010 or HADM 2011 or HADM 2021 or HADM 3010.

Permission Note Priority given to: SHA students.

Outcomes

  • Understanding of the basics concept and pipeline of machine learning.
  • Apply and interpret the outcome of popular machine learning algorithms.
  • Using data to support decisions.
  • Be aware of ethical concerns of machine learning, including fairness, privacy, security issues and social responsibility.

When Offered Spring.

Satisfies Requirement Elective.

Comments Course can qualify for Hospitality Analytics Specialization elective.

View Enrollment Information

Syllabi: none
  •   Seven Week - Second.  Combined with: HADM 6750

  • 1.5 Credits Stdnt Opt

  • 18922 HADM 4750   LEC 001

  • Instruction Mode: In Person

Syllabi: none
  •   Seven Week - Second.  Combined with: HADM 6750

  • 1.5 Credits Stdnt Opt

  • 18923 HADM 4750   LEC 002

  • Instruction Mode: In Person