Thesis/Capstone
Publication Date
Advisor(s):
Chris Caplice
Topic(s) Covered:
- Demand Planning
- Fulfillment
Abstract
This project utilizes data mining techniques to determine the drivers of stock-out performance. Best performing and worst performing clusters of stores were identified using data clustering techniques. Logistic regression and multiple ordinary-least-squares regression were then used to gain further insights and quantify the drivers of stock-outs.
Author: Khalid Usman
Advisor: Chris Caplice