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Due to electronic rights, some third party content may be suppressed from the eBook and/or eChapter(s). May not be copied, scanned, or duplicated, in whole or in part. Revisitedġ4.5 Adoption of a New Product: The Bass Forecasting ModelĬase Problem: Portfolio Optimization with Transaction Costsġ5.2 Decision Analysis Without Probabilitiesġ5.3 Decision Analysis with Probabilitiesġ5.4 Decision Analysis with Sample Informationġ5.5 Computing Branch Probabilities with Bayes’ TheoremĪppendix B Database Basics with Microsoft Accessīusiness Analytics Descriptive Predictive Prescriptive Jeffrey D.
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1.3 A Categorization of Analytical Methods and Modelsġ.6 Legal and Ethical Issues in the Use of Data and AnalyticsĢ.1 Overview of Using Data: Definitions and GoalsĢ.8 Measures of Association Between Two VariablesĬase Problem 1: Heavenly Chocolates Web Site TransactionsĬase Problem 2: African Elephant PopulationsĬhapter 4: P robability: An Introduction to Modeling UncertaintyĤ.2 Some Basic Relationships of ProbabilityĦ.6 Big Data, Statistical Inference, and Practical SignificanceĬase Problem 1: Young Professional Magazineħ.3 Assessing the Fit of the Simple Linear Regression ModelĬase Problem 3: Predicting Winnings for NASCAR DriversĬhapter 8: Time Series Analysis and ForecastingĨ.3 Moving Averages and Exponential SmoothingĨ.4 Using Regression Analysis for ForecastingĨ.5 Determining the Best Forecasting Model to UseĬase Problem 1: Forecasting Food and Beverage Salesĩ.1 Data Sampling, Preparation, and Partitioningġ0.3 Some Useful Excel Functions for Modelingġ0.5 Predictive and Prescriptive Spreadsheet Modelsġ1.2 Inventory Policy Analysis for Promus Corpġ1.3 Simulation Modeling for Land Shark Inc.ġ1.4 Simulation with Dependent Random VariablesĪppendix: Common Probability Distributions for Simulationġ2.4 Special Cases of Linear Program Outcomesġ2.6 General Linear Programming Notation and More Examplesġ2.7 Generating an Alternative Optimal Solution for a Linear ProgramĬhapter 13: Integer Linear Optimization Modelsġ3.1 Types of Integer Linear Optimization Modelsġ3.2 Eastborne Realty, an Example of Integer Optimizationġ3.3 Solving Integer Optimization Problems with Excel Solverġ3.4 Applications Involving Binary Variablesġ3.5 Modeling Flexibility Provided by Binary Variablesġ3.6 Generating Alternatives in Binary OptimizationĬase Problem: Applecore Children’s ClothingĬhapter 14: Nonlinear Optimization Modelsġ4.1 A Production Application: Par, Inc.
