Introductory management science
Author(s)
Bibliographic Information
Introductory management science
(Prentice Hall International editions)
Prentice-Hall International, 1988
2nd ed.
Available at 5 libraries
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Note
Includes index
Description and Table of Contents
Description
Revised and updated, this package is designed to offer people the flexibility to create their own presentations. Introducing students to key ideas of management science - problem framing, health skepticism, cost concepts and optimality and sensitivity - this text places the emphasis on studying the models of management science - how they are created, how they are used and what paradigms they provide. New features of the third edition include a case study on cash flow matching and an integer programming model of a financial problem; a section on the M/G/1 queuing model; examples using the GINO software package; a number of problems helpful for mastering basic concepts; and integrated use of computer programming for problem-solving.
Table of Contents
- Linear programming - format and spreadsheet models, geometric representations and graphical solutions
- analysis of LP models - the graphical approach
- linear programs - computer analysis, interpreting sensitivity output and the dual problem
- linear programs- the simplex method, special applications
- integer and quadratic programming
- network models project management - PERT and CPM
- inventory control with known demand
- inventory models with probabilistic demand
- queuing models
- simulation
- decision theory and decision trees
- forecasting
- heuristics, multiple objectives and goal programming
- calculus-based optimization and an introduction to nonlinear programming.
by "Nielsen BookData"