Description
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- Title Page
- Copyright
- Pearson’s Commitment to Diversity, Equity, and Inclusion
- Brief Contents
- Contents
- Preface
- About the Authors
- Chapter 1. Introduction to Quantitative Analysis
- 1.1 What Is Quantitative Analysis?
- 1.2 Business Analytics
- 1.3 The Quantitative Analysis Approach
- Defining the Problem
- Developing a Model
- Acquiring Input Data
- Developing a Solution
- Testing the Solution
- Analyzing the Results and Conducting Sensitivity Analysis
- Implementing the Results
- The Quantitative Analysis Approach and Modeling in the Real World
- 1.4 How to Develop a Quantitative Analysis Model
- The Advantages of Mathematical Modeling
- Mathematical Models Categorized by Risk
- 1.5 The Role of Computers and Spreadsheet Models in the Quantitative Analysis Approach
- 1.6 Possible Problems in the Quantitative Analysis Approach
- Defining the Problem
- Developing a Model
- Acquiring Input Data
- Developing a Solution
- Testing the Solution
- Analyzing the Results
- 1.7 Implementation—Not Just the Final Step
- Lack of Commitment and Resistance to Change
- Lack of Commitment by Quantitative Analysts
- 1.8 Developing Skills for Your Career
- Summary
- Glossary
- Key Equations
- Self-Test
- Discussion Questions and Problems
- Case Study: Food and Beverages at Southwestern University Football Games
- Case Study: The Alset Electric Car
- Notes
- Bibliography
- Chapter 2. Probability Concepts and Applications
- 2.1 Fundamental Concepts
- Two Basic Rules of Probability
- Types of Probability
- Mutually Exclusive and Collectively Exhaustive Events
- Unions and Intersections of Events
- Probability Rules for Unions, Intersections, and Conditional Probabilities
- 2.2 Revising Probabilities with Bayes’ Theorem
- General Form of Bayes’ Theorem
- 2.3 Further Probability Revisions
- 2.4 Random Variables
- 2.5 Probability Distributions
- Probability Distribution of a Discrete Random Variable
- Expected Value of a Discrete Probability Distribution
- Variance of a Discrete Probability Distribution
- Probability Distribution of a Continuous Random Variable
- 2.6 The Binomial Distribution
- Solving Problems with the Binomial Formula
- Solving Problems with Binomial Tables
- 2.7 The Normal Distribution
- Area under the Normal Curve
- Using the Standard Normal Table
- Haynes Construction Company Example
- The Empirical Rule
- 2.8 The F Distribution
- 2.9 The Exponential Distribution
- Arnold’s Muffler Example
- 2.10 The Poisson Distribution
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: WTVX
- Case Study: OzDe Distributing
- Notes
- Bibliography
- Appendix 2.1: Derivation of Bayes’ Theorem
- Chapter 3. Decision Analysis
- 3.1 The Six Steps in Decision Making
- 3.2 Types of Decision-Making Environments
- 3.3 Decision Making under Uncertainty
- Optimistic
- Pessimistic
- Criterion of Realism (Hurwicz Criterion)
- Equally Likely (Laplace Criterion)
- Minimax Regret
- 3.4 Decision Making under Risk
- Expected Monetary Value
- Expected Value of Perfect Information
- Expected Opportunity Loss
- Sensitivity Analysis
- A Minimization Example
- 3.5 Using Software for Payoff Table Problems
- QM for Windows
- Excel QM
- 3.6 Decision Trees
- Efficiency of Sample Information 103 Sensitivity Analysis
- 3.7 How Probability Values Are Estimated by Bayesian Analysis
- Calculating Revised Probabilities
- Potential Problem in Using Survey Results
- 3.8 Utility Theory
- Measuring Utility and Constructing a Utility Curve
- Utility as a Decision-Making Criterion
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Starting Right Corporation
- Case Study: Toledo Leather Company
- Case Study: Blake Electronics
- Notes
- Bibliography
- Chapter 4. Regression Models
- 4.1 Scatter Diagrams
- 4.2 Simple Linear Regression
- 4.3 Measuring the Fit of the Regression Model
- Coefficient of Determination
- Correlation Coefficient
- 4.4 Assumptions of the Regression Model
- Estimating the Variance
- 4.5 Testing the Model for Significance
- Triple A Construction Example
- The Analysis of Variance (ANOVA) Table
- Triple A Construction ANOVA Example
- 4.6 Using Computer Software for Regression
- Excel
- Excel QM
- QM for Windows
- 4.7 Multiple Regression Analysis
- Evaluating the Multiple Regression Model
- Jenny Wilson Realty Example
- 4.8 Binary or Dummy Variables
- 4.9 Model Building
- Stepwise Regression
- Multicollinearity
- 4.10 Nonlinear Regression
- 4.11 Cautions and Pitfalls in Regression Analysis
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Brobeson Technologies
- Case Study: North–South Airline
- Case Study: Mostashari Food Distribution LLP
- Notes
- Bibliography
- Appendix 4.1: Formulas for Regression Calculations
- Chapter 5. Forecasting
- 5.1 Types of Forecasting Models
- Qualitative Models
- Causal Models
- Time-Series Models
- 5.2 Components of a Time Series
- 5.3 Measures of Forecast Accuracy
- 5.4 Forecasting Models—Random Variations Only
- Moving Averages
- Weighted Moving Averages
- Exponential Smoothing
- Using Software for Forecasting Time Series
- 5.5 Forecasting Models—Trend and Random Variations
- Exponential Smoothing with Trend
- Trend Projections
- 5.6 Adjusting for Seasonal Variations
- Seasonal Indices
- Calculating Seasonal Indices with No Trend
- Calculating Seasonal Indices with Trend
- 5.7 Forecasting Models—Trend, Seasonal, and Random Variations
- The Decomposition Method
- Software for Decomposition
- Using Regression with Trend and Seasonal Components
- 5.8 Monitoring and Controlling Forecasts
- Adaptive Smoothing
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Forecasting Attendance at SWU Football Games
- Case Study: JVB Electric Company
- Case Study: Forecasting Monthly Sales
- Notes
- Bibliography
- Chapter 6. Inventory Control Models
- 6.1 Importance of Inventory Control
- Decoupling Function
- Storing Resources
- Irregular Supply and Demand
- Quantity Discounts
- Avoiding Stockouts and Shortages
- 6.2 Inventory Decisions
- 6.3 Economic Order Quantity: Determining How Much to Order
- Inventory Costs in the EOQ Situation
- Finding the EOQ
- Sumco Pump Company Example
- Purchase Cost of Inventory Items
- Sensitivity Analysis with the EOQ Model
- 6.4 Reorder Point: Determining When to Order
- 6.5 EOQ without the Instantaneous Receipt Assumption
- Annual Carrying Cost for Production Run Model
- Annual Setup Cost or Annual Ordering Cost
- Determining the Optimal Production Quantity
- Brown Manufacturing Example
- 6.6 Quantity Discount Models
- Brass Department Store Example
- 6.7 Use of Safety Stock
- 6.8 Single-Period Inventory Models
- Marginal Analysis with Discrete Distributions
- Café du Donut Example
- Marginal Analysis with the Normal Distribution
- Newspaper Example
- 6.9 ABC Analysis
- 6.10 Dependent Demand: The Case for Material Requirements Planning
- Material Structure Tree
- Gross and Net Material Requirements Plans
- Two or More End Products
- 6.11 Just-in-Time Inventory Control
- 6.12 Enterprise Resource Planning
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: EOM Enterprises
- Case Study: ADO Cycles
- Case Study: The Pot Company
- Notes
- Bibliography
- Appendix 6.1: Inventory Control with QM for Windows
- Chapter 7. Linear Programming Models: Graphical and Computer Methods
- 7.1 Requirements of a Linear Programming Problem
- 7.2 Formulating LP Problems
- Flair Furniture Company
- 7.3 Graphical Solution to an LP Problem
- Graphical Representation of Constraints
- Isoprofit Line Solution Method
- Corner Point Solution Method
- Slack and Surplus
- 7.4 Solving Flair Furniture’s LP Problem Using QM for Windows, Excel, and Excel QM
- Using QM for Windows
- Using Excel’s Solver Command to Solve LP Problems
- Using Excel QM
- 7.5 Solving Minimization Problems
- Holiday Meal Turkey Ranch
- 7.6 Four Special Cases in LP
- No Feasible Solution
- Unboundedness
- Redundancy
- Alternate Optimal Solutions
- 7.7 Sensitivity Analysis
- High Note Sound Company
- Changes in the Objective Function Coefficient
- QM for Windows and Changes in Objective Function Coefficients
- Excel Solver and Changes in Objective Function Coefficients
- Changes in the Technological Coefficients
- Changes in the Resources or Right-Hand-Side Values
- QM for Windows and Changes in Right-Hand-Side Values
- Excel Solver and Changes in Right-Hand-Side Values
- Summary
- Glossary
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: The Traveling Salesman Problem: An Introduction
- Case Study: Mexicana Wire Winding, Inc.
- Notes
- Bibliography
- Chapter 8. Linear Programming Applications
- 8.1 Marketing Applications
- Media Selection
- Marketing Research
- 8.2 Manufacturing Applications
- Production Mix
- Production Scheduling
- 8.3 Employee Scheduling Applications
- Labor Planning
- 8.4 Financial Applications
- Portfolio Selection
- Truck Loading Problem
- 8.5 Ingredient Blending Applications
- Diet Problems
- Ingredient Mix and Blending Problems
- 8.6 Other Linear Programming Applications
- Summary
- Self-Test
- Problems
- Case Study: Fleet Scheduling at Swearingen Trucking
- Case Study: Cable & Moore
- Notes
- Bibliography
- Chapter 9. Transportation, Assignment, and Network Models
- 9.1 The Transportation Problem
- Linear Program for the Transportation Example
- Solving Transportation Problems Using Computer Software
- A General LP Model for Transportation Problems
- Facility Location Analysis
- 9.2 The Assignment Problem
- Linear Program for Assignment Example
- 9.3 The Transshipment Problem
- Linear Program for Transshipment Example
- 9.4 Maximal-Flow Problem
- Example
- 9.5 Shortest-Route Problem
- 9.6 Minimal-Spanning Tree Problem
- Summary
- Glossary
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Revenue Management: Theater Tickets
- Case Study: H&C Hot Sauce
- Case Study: Northeastern Airlines
- Case Study: Southwestern University Traffic Problems
- Notes
- Bibliography
- Appendix 9.1: Using QM for Windows
- Chapter 10. Integer Programming, Goal Programming, and Nonlinear Programming
- 10.1 Integer Programming
- Harrison Electric Company Example of Integer Programming
- Using Software to Solve the Harrison Integer Programming Problem
- Mixed-Integer Programming Problem Example
- 10.2 Modeling with 0–1 (Binary) Variables
- Capital Budgeting Example
- Limiting the Number of Alternatives Selected
- Dependent Selections
- Fixed-Charge Problem Example
- Financial Investment Example
- 10.3 Goal Programming
- Example of Goal Programming: Harrison Electric Company Revisited
- Extension to Equally Important Multiple Goals
- Ranking Goals with Priority Levels
- Goal Programming with Weighted Goals
- 10.4 Nonlinear Programming
- Nonlinear Objective Function and Linear Constraints
- Both Nonlinear Objective Function and Nonlinear Constraints
- Linear Objective Function with Nonlinear Constraints
- Summary
- Glossary
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Schank Marketing Research
- Case Study: Oakton River Bridge
- Notes
- Bibliography
- Chapter 11. Project Management
- 11.1 PERT/CPM
- General Foundry Example of PERT/CPM
- Drawing the PERT/CPM Network
- Activity Times
- How to Find the Critical Path
- Probability of Project Completion
- What PERT Was Able to Provide
- Using Excel QM for the General Foundry Example
- Sensitivity Analysis and Project Management
- 11.2 PERT/Cost
- Planning and Scheduling Project Costs: Budgeting Process
- Monitoring and Controlling Project Costs
- 11.3 Project Crashing
- General Foundry Example
- Project Crashing with Linear Programming
- 11.4 Other Topics in Project Management
- Subprojects
- Milestones
- Resource Leveling
- Software
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Fiore Construction Company
- Case Study: Southwestern University Stadium Construction
- Case Study: Family Planning Research Center of Nigeria
- Notes
- Bibliography
- Appendix 11.1: Project Management with QM for Windows
- Chapter 12. Waiting Lines and Queuing Theory Models
- 12.1 Waiting-Line Costs
- Three Rivers Shipping Company Example
- 12.2 Characteristics of a Queuing System
- Arrival Characteristics
- Waiting-Line Characteristics
- Service Facility Characteristics
- Identifying Models Using Kendall Notation
- 12.3 Single-Channel Queuing Model with Poisson Arrivals and Exponential Service Times (M/M/1)
- Assumptions of the Model
- Queuing Equations
- Arnold’s Muffler Shop Case
- Enhancing the Queuing Environment
- 12.4 Multichannel Queuing Model with Poisson Arrivals and Exponential Service Times (M/M/m)
- Equations for the Multichannel Queuing Model
- Arnold’s Muffler Shop Revisited
- 12.5 Constant Service Time Model (M/D/1)
- Equations for the Constant Service Time Model
- Garcia-Golding Recycling, Inc.
- 12.6 Finite Population Model (M/M/1 with Finite Source)
- Equations for the Finite Population Model
- Department of Commerce Example
- 12.7 Some General Operating Characteristic Relationships
- 12.8 More Complex Queuing Models and the Use of Simulation
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: New England Foundry
- Case Study: Winter Park Hotel
- Notes
- Bibliography
- Appendix 12.1: Using QM for Windows
- Chapter 13. Simulation Modeling
- 13.1 Advantages and Disadvantages of Simulation
- 13.2 Monte Carlo Simulation
- Harry’s Auto Tire Example
- Using QM for Windows for Simulation
- Simulation with Excel Spreadsheets
- 13.3 Simulation and Inventory Analysis
- Simkin’s Hardware Store
- Analyzing Simkin’s Inventory Costs
- 13.4 Simulation of a Queuing Problem
- Port of New Orleans
- Using Excel to Simulate the Port of New Orleans Queuing Problem
- 13.5 Simulation Model for a Maintenance Policy
- Three Hills Power Company
- Cost Analysis of the Simulation
- 13.6 Other Simulation Issues
- Two Other Types of Simulation Models
- Verification and Validation
- Role of Computers in Simulation
- Summary
- Glossary
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Alabama Airlines
- Case Study: Statewide Development Corporation
- Case Study: Beltway 8 Toll Road in Houston, Texas
- Case Study: FB Badpoore Aerospace
- Notes
- Bibliography
- Chapter 14. Markov Analysis
- 14.1 States and State Probabilities
- The Vector of State Probabilities for the Grocery Store Example
- 14.2 Matrix of Transition Probabilities
- Transition Probabilities for Grocery Store Example
- 14.3 Predicting Future Market Shares
- 14.4 Markov Analysis of Machine Operations
- 14.5 Equilibrium Conditions
- 14.6 Absorbing States and the Fundamental Matrix: Accounts Receivable Application
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Case Study: Rentall Trucks
- Notes
- Bibliography
- Appendix 14.1: Markov Analysis with QM for Windows
- Appendix 14.2: Markov Analysis with Excel
- Chapter 15. Statistical Quality Control
- 15.1 Defining Quality and TQM
- 15.2 Statistical Process Control
- Variability in the Process
- 15.3 Control Charts for Variables
- The Central Limit Theorem
- Setting -x-Chart Limits
- Setting Range Chart Limits
- 15.4 Control Charts for Attributes
- p-Charts
- c-Charts
- Summary
- Glossary
- Key Equations
- Solved Problems
- Self-Test
- Discussion Questions and Problems
- Notes
- Bibliography
- Appendix 15.1: Using QM for Windows for SPC
- Appendices
- Appendix A: Areas under the Standard Normal Curve
- Appendix B: Binomial Probabilities
- Appendix C: Values of e−λ for Use in the Poisson Distribution 587
- Appendix D: F Distribution Values
- Appendix E: Using QM for Windows
- Appendix F: Using Excel QM and Excel Add-Ins
- Appendix G: Solutions to Selected Problems
- Appendix H: Solutions to Self-Tests
- Index
- A
- B
- C
- D
- E
- F
- G
- H
- I
- J
- K
- L
- M
- N
- O
- P
- Q
- R
- S
- T
- U
- V
- W
- X
- Y
- Z




