Practical Management Science
6th Edition
ISBN: 9781337671989
Author: WINSTON
Publisher: Cengage
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Chapter 14.2, Problem 2P
Summary Introduction
To classify: The consumers using logistic regression based on explanatory variables.
Introduction: Simulation model is the digital prototype of the physical model that helps to
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