Spreadsheet Modeling & Decision Analysis: A Practical Introduction To Business Analytics, Loose-leaf Version
8th Edition
ISBN: 9781337274852
Author: Ragsdale, Cliff
Publisher: South-Western College Pub
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Chapter 4, Problem 5QP
Summary Introduction
To determine: The sensitivity report using solver.
a)
Summary Introduction
To determine: The smallest value for X3.
b)
Summary Introduction
To determine: The optimal objective function for the given condition.
c)
Summary Introduction
To determine: The optimal objective function when the RHS of 1st constraint increases to 7.
d)
Summary Introduction
To determine: The optimal objective function when the RHS of 1st constraint decreases to 1.
e)
Summary Introduction
To determine: Whether the current solution remain optimal under the given condition.
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Chapter 4 Solutions
Spreadsheet Modeling & Decision Analysis: A Practical Introduction To Business Analytics, Loose-leaf Version
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