Introduction to Probability Models Operations Research, Volume II (with CD-ROM and InfoTrac)
by Winston, Wayne L.Buy New
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Summary
Table of Contents
| 1. REVIEW OF CALCULUS AND PROBABILITY | |
| Review of Differential Calculus | |
| Review of Integral Calculus | |
| Differentiation of Integrals | |
| Basic Rules of Probability | |
| Bayes' Rule | |
| Random Variables | |
| Mean Variance and Covariance | |
| The Normal Distribution | |
| Z-Transforms | |
| Review Problems | |
| 2. DECISION MAKING UNDER UNCERTAINTY | |
| Decision Criteria | |
| Utility Theory | |
| Flaws in Expected Utility Maximization: Prospect Theory and Framing Effects | |
| Decision Trees | |
| Bayes' Rule and Decision Trees | |
| Decision Making with Multiple Objectives | |
| The Analytic Hierarchy Process | |
| Review Problems | |
| 3. DETERMINISTIC EOQ INVENTORY MODELS | |
| Introduction to Basic Inventory Models | |
| The Basic Economic Order Quantity Model | |
| Computing the Optimal Order Quantity When Quantity Discounts Are Allowed | |
| The Continuous Rate EOQ Model | |
| The EOQ Model with Back Orders Allowed | |
| Multiple Product Economic Order Quantity Models | |
| Review Problems | |
| 4. PROBABILISTIC INVENTORY MODELS Single Period Decision Models | |
| The Concept of Marginal Analysis | |
| The News Vendor Problem: Discrete Demand | |
| The News Vendor Problem: Continuous Demand | |
| Other One¡XPeriod Models | |
| The EOQ with Uncertain Demand: the (r, q) and (s, S models) | |
| The EOQ with Uncertain Demand: The Service Level Approach to Determining Safety Stock Level | |
| Periodic Review Policy | |
| The ABC Inventory Classification System | |
| Exchange Curves | |
| Review Problems | |
| 5. MARKOV CHAINS | |
| What is a Stochastic Process | |
| What is a Markov Chain? N-Step Transition Probabilities | |
| Classification of States in a Markov Chain | |
| Steady-State Probabilities and Mean First Passage Times | |
| Absorbing Chains | |
| Work-Force Planning Models | |
| 6. DETERMINISTIC DYNAMIC PROGRAMMING | |
| Two Puzzles | |
| A Network Problem | |
| An Inventory Problem | |
| Resource Allocation Problems | |
| Equipment Replacement Problems | |
| Formulating Dynamic Programming Recursions | |
| The Wagner-Whitin Algorithm and the Silver-Meal Heuristic | |
| Forward Recursions | |
| Using Spreadsheets to Solve Dynamic Programming Problems | |
| Review Problems | |
| 7. PROBABILISTIC DYNAMIC PROGRAMMING | |
| When Current Stage Costs are Uncertain but the Next Period's State is Certain | |
| A Probabilistic Inventory Model | |
| How to Maximize the Probability of a Favorable Event Occurring | |
| Further Examples of Probabilistic Dynamic Programming Formulations | |
| Markov Decision Processes | |
| Review Problems | |
| 8. QUEUING THEORY | |
| Some Queuing Terminology | |
| Modeling Arrival and Service Processes | |
| Birth-Death Processes | |
| M/M/1/GD/„V/„V Queuing System and the Queuing Formula L=ƒÜ W, The M/M/1/GD/„V Queuing System | |
| The M/M/S/ GD/„V/„V Queuing System | |
| The M/G/ „V/GD/„V„V and GI/G/„V/GD/„V/„VModels | |
| The M/ G/1/GD/„V/„V Queuing System | |
| Finite Source Models: The Machine Repair Model | |
| Exponential Queues in Series and Opening Queuing Networks | |
| How to Tell whether Inter-arrival Times and Service Times Are Exponential | |
| The M/G/S/GD/S/„V System (Blocked Customers Cleared) | |
| Closed Queuing Networks | |
| An Approximation for the G/G/M Queuing System | |
| Priority Queuing Models | |
| Transient Behavior of Queuing Systems | |
| Review Problems | |
| 9. SIMULATION | |
| Basic Terminology | |
| An Example of a Discrete Event Simulation | |
| Random Numbers and Monte Carlo Simulation | |
| An Example of Monte Carlo Simulation | |
| Simulations with Continuous Random Variables | |
| An Example of a Stochastic Simulation | |
| Statistical Analysis in Simulations | |
| Simulation Languages | |
| The Simulation Process | |
| 10. SIMULATION WITH PROCESS MODEL | |
| Simulating an M/M/1 Queuing System | |
| Simulating an M/M/2 System | |
| A Series System | |
| Simulating Open Queuing Networks | |
| Simulating Erlang Service Times | |
| What Else Can Process Model Do? 11. SPREADSHEET SIMULATION WITH @RISK | |
| Introduction to @RISK: The Newsperson Problem | |
| Modeling Cash Flows from a New Product | |
| Bidding Models | |
| Reliability and Warranty Modeling | |
| RISKGENERAL Function | |
| RISKCUMULATIVE Function | |
| RISKTRIGEN Function | |
| Creating a Distribution Based on a Point Forecast | |
| Forecasting Income of a Major Corporation | |
| Using Data to Obtain Inputs For New Product Simulations | |
| Playing Craps with @RISK | |
| Project Management | |
| Simulating the NBA Finals | |
| 12. SPREADSHEET SIMULATION AND OPTIMIZATION WITH RISKOPTIMIZER | |
| The Newsperson Problem | |
| Newsperson Problem with Historical Data | |
| Manpower Scheduling Under Uncertainty | |
| Product Mix Problem | |
| Job Shop Scheduling | |
| Traveling Salesperson Problem | |
| 13. OPTION PRICING AND REAL OPTIONS | |
| Lognormal Model for Stock Prices | |
| Option Definitions | |
| Types of Real Options | |
| Valuing Options by Arbitrage Methods | |
| Black-Scholes Option Pricing Formula | |
| Estimating Volatility | |
| Risk Neutral Approach to Option Pricing | |
| Valuing an Internet Start Up and Web TV | |
| Relation Between Binomial and Lognormal Models | |
| Pricing American Options with Binomial Trees | |
| Pricing European Puts and Calls with Simulation | |
| Using Simulation to Model Real Options | |
| 14. PORTFOLIO RISK, OPTIMIZATION AND HEDGING | |
| Measuring Value at Risk (VAR) | |
| Scenario Approach to Portfolio Optimization | |
| 15. FORECASTING | |
| Moving Average Forecasting Methods | |
| Simple Exponential Smoothing | |
| Holt's Method: Exponential Smoothing with Trend | |
| Winter's Method: Exponential Smoothing with Seasonality | |
| Ad Hoc Forecasting, Simple Linear Regression | |
| Fitting Non-Linear Relationships | |
| Multiple Regression | |
| 16. BROWNIAN MOTION, STOCHASTIC CALCULUS, AND OPTIMAL CONTROL | |
| What Is Brownian Motion? Derivation of Brownian Motion as a Limit of Random Walks | |
| Stochastic Differential Equations | |
| Ito's Lemma | |
| Using Ito's Lemma to Derive the Black-Scholes Equation | |
| An Introduction to Stochastic Control |
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