An Introduction to Management Science: Quantitative Approaches to Decision Making 16th edition

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Jeffrey D. Camm, James J. Cochran, Michael J. Fry, Jeffrey W. Ohlmann, David R. Anderson, Dennis J. Sweeney, and Thomas A. Williams
Publisher: Cengage Learning

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  • Camm An Introduction to Management Science 16e

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  • Chapter 1: Introduction
    • 1.1: Problem Solving and Decision Making
    • 1.2: Quantitative Analysis and Decision Making
    • 1.3: Quantitative Analysis
    • 1.4: Models of Cost, Revenue, and Profit
    • 1.5: Management Science Techniques
    • 1: Exercises
    • 1: Test Bank

  • Chapter 2: An Introduction to Linear Programming
    • 2.1: A Simple Maximization Problem
    • 2.2: Graphical Solution Procedure
    • 2.3: Extreme Points and the Optimal Solution
    • 2.4: Computer Solution of the Par, Inc., Problem
    • 2.5: A Simple Minimization Problem
    • 2.6: Special Cases
    • 2.7: General Linear Programming Notation
    • 2: Exercises
    • 2: Case Problems
    • 2: Test Bank

  • Chapter 3: Linear Programming: Sensitivity Analysis and Interpretation of Solution
    • 3.1: Introduction to Sensitivity Analysis
    • 3.2: Graphical Sensitivity Analysis
    • 3.3: Sensitivity Analysis: Computer Solution
    • 3.4: Limitations of Classical Sensitivity Analysis
    • 3.5: The Electronic Communications Problem
    • 3: Exercises
    • 3: Case Problems
    • 3: Test Bank

  • Chapter 4: Linear Programming Applications in Marketing, Finance, and Operations Management
    • 4.1: Marketing Applications
    • 4.2: Financial Applications
    • 4.3: Operations Management Applications
    • 4: Exercises
    • 4: Case Problems
    • 4: Test Bank

  • Chapter 5: Advanced Linear Programming Applications
    • 5.1: Data Envelopment Analysis
    • 5.2: Revenue Management
    • 5.3: Portfolio Models and Asset Allocation
    • 5.4: Game Theory
    • 5: Exercises
    • 5: Test Bank

  • Chapter 6: Distribution and Network Models
    • 6.1: Supply Chain Models
    • 6.2: Assignment Problem
    • 6.3: Shortest-Route Problem
    • 6.4: Maximal Flow Problem
    • 6.5: A Production and Inventory Application
    • 6: Exercises
    • 6: Case Problems
    • 6: Test Bank

  • Chapter 7: Integer Linear Programming
    • 7.1: Types of Integer Linear Programming Models
    • 7.2: Graphical and Computer Solutions for an All-Integer Linear Program
    • 7.3: Applications Involving 0-1 Variables
    • 7.4: Modeling Flexibility Provided by 0-1 Integer Variables
    • 7: Exercises
    • 7: Case Problems
    • 7: Test Bank

  • Chapter 8: Nonlinear Optimization Models
    • 8.1: A Production Application—Par, Inc., Revisited
    • 8.2: Constructing an Index Fund
    • 8.3: Markowitz Portfolio Model
    • 8.4: Blending: The Pooling Problem
    • 8.5: Forecasting Adoption of a New Product
    • 8: Exercises
    • 8: Case Problems
    • 8: Test Bank

  • Chapter 9: Project Scheduling: PERT/CPM
    • 9.1: Project Scheduling Based on Expected Activity Times
    • 9.2: Project Scheduling Considering Uncertain Activity Times
    • 9.3: Considering Time-Cost Trade-Offs
    • 9: Exercises
    • 9: Case Problems
    • 9: Test Bank

  • Chapter 10: Inventory Models
    • 10.1: Economic Order Quantity (EOQ) Model
    • 10.2: Economic Production Lot Size Model
    • 10.3: Inventory Model with Planned Shortages
    • 10.4: Quantity Discounts for the EOQ Model
    • 10.5: Single-Period Inventory Model with Probabilistic Demand
    • 10.6: Order-Quantity, Reorder Point Model with Probabilistic Demand
    • 10.7: Periodic Review Model with Probabilistic Demand
    • 10: Exercises
    • 10: Case Problems
    • 10: Test Bank

  • Chapter 11: Waiting Line Models
    • 11.1: Structure of a Waiting Line System
    • 11.2: Single-Server Waiting Line Model with Poisson Arrivals and Exponential Service Times
    • 11.3: Multiple-Server Waiting Line Model with Poisson Arrivals and Exponential Service Times
    • 11.4: Some General Relationships for Waiting Line Models
    • 11.5: Economic Analysis of Waiting Lines
    • 11.6: Other Waiting Line Models
    • 11.7: Single-Server Waiting Line Model with Poisson Arrivals and Arbitrary Service Times
    • 11.8: Multiple-Server Model with Poisson Arrivals, Arbitrary Service Times, and No Waiting Line
    • 11.9: Waiting Line Models with Finite Calling Populations
    • 11: Exercises
    • 11: Case Problems
    • 11: Test Bank

  • Chapter 12: Simulation
    • 12.1: What-If Analysis
    • 12.2: Simulation of Sanotronics Problem
    • 12.3: Inventory Simulation
    • 12.4: Waiting Line Simulation
    • 12.5: Simulation Considerations
    • 12: Exercises
    • 12: Case Problems
    • 12: Test Bank

  • Chapter 13: Decision Analysis
    • 13.1: Problem Formulation
    • 13.2: Decision Making Without Probabilities
    • 13.3: Decision Making With Probabilities
    • 13.4: Risk Analysis and Sensitivity Analysis
    • 13.5: Decision Analysis with Sample Information
    • 13.6: Computing Branch Probabilities with Bayes' Theorem
    • 13.7: Utility Theory
    • 13: Exercises
    • 13: Case Problems
    • 13: Test Bank

  • Chapter 14: Multicriteria Decisions
    • 14.1: Goal Programming: Formulation and Graphical Solution
    • 14.2: Goal Programming: Solving More Complex Problems
    • 14.3: Scoring Models
    • 14.4: Analytic Hierarchy Process
    • 14.5: Establishing Priorities Using AHP
    • 14.6: Using AHP to Develop an Overall Priority Ranking
    • 14: Exercises
    • 14: Case Problems
    • 14: Test Bank

  • Chapter 15: Time Series Analysis and Forecasting
    • 15.1: Time Series Patterns
    • 15.2: Forecast Accuracy
    • 15.3: Moving Averages and Exponential Smoothing
    • 15.4: Linear Trend Projection
    • 15.5: Seasonality
    • 15: Exercises
    • 15: Case Problems
    • 15: Test Bank

  • Chapter 16: Markov Processes
    • 16.1: Market Share Analysis
    • 16.2: Accounts Receivable Analysis
    • 16: Exercises
    • 16: Case Problems
    • 16: Test Bank

  • Chapter A: Appendix
    • A: Appendix A: Basics of Excel

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Group Quantity Questions
Chapter 1: Introduction
1 0  
Chapter 2: An Introduction to Linear Programming
2 0  
Chapter 3: Linear Programming: Sensitivity Analysis and Interpretation of Solution
3 0  
Chapter 4: Linear Programming Applications in Marketing, Finance, and Operations Management
4 0  
Chapter 5: Advanced Linear Programming Applications
5 0  
Chapter 6: Distribution and Network Models
6 0  
Chapter 7: Integer Linear Programming
7 0  
Chapter 8: Nonlinear Optimization Models
8 0  
Chapter 9: Project Scheduling: PERT/CPM
9 0  
Chapter 10: Inventory Models
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Chapter 11: Waiting Line Models
11 0  
Chapter 12: Simulation
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Chapter 13: Decision Analysis
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Chapter 14: Multicriteria Decisions
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Chapter 15: Time Series Analysis and Forecasting
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Chapter 16: Markov Processes
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Total 0