Marketing Analytics: Data-Driven Techniques with Microsoft Excel

Höfundur Wayne L. Winston

Útgefandi Wiley Professional Development (P&T)

Snið Page Fidelity

Print ISBN 9781118373439

Útgáfa 1

Útgáfuár 2014

4.090 kr.

Description

Efnisyfirlit

  • Title Page
  • Copyright
  • Contents
  • Introduction
  • Part I Using Excel to Summarize Marketing Data
  • Chapter 1 Slicing and Dicing Marketing Data with PivotTables
  • Analyzing Sales at True Colors Hardware
  • Analyzing Sales at La Petit Bakery
  • Analyzing How Demographics Affect Sales
  • Pulling Data from a PivotTable with the GETPIVOTDATA Function
  • Summary
  • Exercises
  • Chapter 2 Using Excel Charts to Summarize Marketing Data
  • Combination Charts
  • Using a PivotChart to Summarize Market Research Surveys
  • Ensuring Charts Update Automatically When New Data is Added
  • Making Chart Labels Dynamic
  • Summarizing Monthly Sales-Force Rankings
  • Using Check Boxes to Control Data in a Chart
  • Using Sparklines to Summarize Multiple Data Series
  • Using GETPIVOTDATA to Create the End-of-Week Sales Report
  • Summary
  • Exercises
  • Chapter 3 Using Excel Functions to Summarize Marketing Data
  • Summarizing Data with a Histogram
  • Using Statistical Functions to Summarize Marketing Data
  • Summary
  • Exercises
  • Part II Pricing
  • Chapter 4 Estimating Demand Curves and Using Solver to Optimize Price
  • Estimating Linear and Power Demand Curves
  • Using the Excel Solver to Optimize Price
  • Pricing Using Subjectively Estimated Demand Curves
  • Using SolverTable to Price Multiple Products
  • Summary
  • Exercises
  • Chapter 5 Price Bundling
  • Why Bundle?
  • Using Evolutionary Solver to Find Optimal Bundle Prices
  • Summary
  • Exercises
  • Chapter 6 Nonlinear Pricing
  • Demand Curves and Willingness to Pay
  • Profit Maximizing with Nonlinear Pricing Strategies
  • Summary
  • Exercises
  • Chapter 7 Price Skimming and Sales
  • Dropping Prices Over Time
  • Why Have Sales?
  • Summary
  • Exercises
  • Chapter 8 Revenue Management
  • Estimating Demand for the Bates Motel and Segmenting Customers
  • Handling Uncertainty
  • Markdown Pricing
  • Summary
  • Exercises
  • Part III Forecasting
  • Chapter 9 Simple Linear Regression and Correlation
  • Simple Linear Regression
  • Using Correlations to Summarize Linear Relationships
  • Summary
  • Exercises
  • Chapter 10 Using Multiple Regression to Forecast Sales
  • Introducing Multiple Linear Regression
  • Running a Regression with the Data Analysis Add-In
  • Interpreting the Regression Output
  • Using Qualitative Independent Variables in Regression
  • Modeling Interactions and Nonlinearities
  • Testing Validity of Regression Assumptions
  • Multicollinearity
  • Validation of a Regression
  • Summary
  • Exercises
  • Chapter 11 Forecasting in the Presence of Special Events
  • Building the Basic Model
  • Summary
  • Exercises
  • Chapter 12 Modeling Trend and Seasonality
  • Using Moving Averages to Smooth Data and Eliminate Seasonality
  • An Additive Model with Trends and Seasonality
  • A Multiplicative Model with Trend and Seasonality
  • Summary
  • Exercises
  • Chapter 13 Ratio to Moving Average Forecasting Method
  • Using the Ratio to Moving Average Method
  • Applying the Ratio to Moving Average Method to Monthly Data
  • Summary
  • Exercises
  • Chapter 14 Winter’s Method
  • Parameter Definitions for Winter’s Method
  • Initializing Winter’s Method
  • Estimating the Smoothing Constants
  • Forecasting Future Months
  • Mean Absolute Percentage Error (MAPE)
  • Summary
  • Exercises
  • Chapter 15 Using Neural Networks to Forecast Sales
  • Regression and Neural Nets
  • Using Neural Networks
  • Using NeuralTools to Predict Sales
  • Using NeuralTools to Forecast Airline Miles
  • Summary
  • Exercises
  • Part IV What do Customers Want?
  • Chapter 16 Conjoint Analysis
  • Products, Attributes, and Levels
  • Full Profile Conjoint Analysis
  • Using Evolutionary Solver to Generate Product Profiles
  • Developing a Conjoint Simulator
  • Examining Other Forms of Conjoint Analysis
  • Summary
  • Exercises
  • Chapter 17 Logistic Regression
  • Why Logistic Regression Is Necessary
  • Logistic Regression Model
  • Maximum Likelihood Estimate of Logistic Regression Model
  • Using StatTools to Estimate and Test Logistic Regression Hypotheses
  • Performing a Logistic Regression with Count Data
  • Summary
  • Exercises
  • Chapter 18 Discrete Choice Analysis
  • Random Utility Theory
  • Discrete Choice Analysis of Chocolate Preferences
  • Incorporating Price and Brand Equity into Discrete Choice Analysis
  • Dynamic Discrete Choice
  • Independence of Irrelevant Alternatives (IIA) Assumption
  • Discrete Choice and Price Elasticity
  • Summary
  • Exercises
  • Part V Customer Value
  • Chapter 19 Calculating Lifetime Customer Value
  • Basic Customer Value Template
  • Measuring Sensitivity Analysis with Two-way Tables
  • An Explicit Formula for the Multiplier
  • Varying Margins
  • DIRECTV, Customer Value, and Friday Night Lights (FNL)
  • Estimating the Chance a Customer Is Still Active
  • Going Beyond the Basic Customer Lifetime Value Model
  • Summary
  • Exercises
  • Chapter 20 Using Customer Value to Value a Business
  • A Primer on Valuation
  • Using Customer Value to Value a Business
  • Measuring Sensitivity Analysis with a One-way Table
  • Using Customer Value to Estimate a Firm’s Market Value
  • Summary
  • Exercises
  • Chapter 21 Customer Value, Monte Carlo Simulation, and Marketing Decision Making
  • A Markov Chain Model of Customer Value
  • Using Monte Carlo Simulation to Predict Success of a Marketing Initiative
  • Summary
  • Exercises
  • Chapter 22 Allocating Marketing Resources between Customer Acquisition and Retention
  • Modeling the Relationship between Spending and Customer Acquisition and Retention
  • Basic Model for Optimizing Retention and Acquisition Spending
  • An Improvement in the Basic Model
  • Summary
  • Exercises
  • Part VI Market Segmentation
  • Chapter 23 Cluster Analysis
  • Clustering U.S. Cities
  • Using Conjoint Analysis to Segment a Market
  • Summary
  • Exercises
  • Chapter 24 Collaborative Filtering
  • User-Based Collaborative Filtering
  • Item-Based Filtering
  • Comparing Item- and User-Based Collaborative Filtering
  • The Netflix Competition
  • Summary
  • Exercises
  • Chapter 25 Using Classification Trees for Segmentation
  • Introducing Decision Trees
  • Constructing a Decision Tree
  • Pruning Trees and CART
  • Summary
  • Exercises
  • Part VII Forecasting New Product Sales
  • Chapter 26 Using S Curves to Forecast Sales of a New Product
  • Examining S Curves
  • Fitting the Pearl or Logistic Curve
  • Fitting an S Curve with Seasonality
  • Fitting the Gompertz Curve
  • Pearl Curve versus Gompertz Curve
  • Summary
  • Exercises
  • Chapter 27 The Bass Diffusion Model
  • Introducing the Bass Model
  • Estimating the Bass Model
  • Using the Bass Model to Forecast New Product Sales
  • Deflating Intentions Data
  • Using the Bass Model to Simulate Sales of a New Product
  • Modifications of the Bass Model
  • Summary
  • Exercises
  • Chapter 28 Using the Copernican Principle to Predict Duration of Future Sales
  • Using the Copernican Principle
  • Simulating Remaining Life of Product
  • Summary
  • Exercises
  • Part VIII Retailing
  • Chapter 29 Market Basket Analysis and Lift
  • Computing Lift for Two Products
  • Computing Three-Way Lifts
  • A Data Mining Legend Debunked!
  • Using Lift to Optimize Store Layout
  • Summary
  • Exercises
  • Chapter 30 RFM Analysis and Optimizing Direct Mail Campaigns
  • RFM Analysis
  • An RFM Success Story
  • Using the Evolutionary Solver to Optimize a Direct Mail Campaign
  • Summary
  • Exercises
  • Chapter 31 Using the SCAN*PRO Model and Its Variants
  • Introducing the SCAN*PRO Model
  • Modeling Sales of Snickers Bars
  • Forecasting Software Sales
  • Summary
  • Exercises
  • Chapter 32 Allocating Retail Space and Sales Resources
  • Identifying the Sales to Marketing Effort Relationship
  • Modeling the Marketing Response to Sales Force Effort
  • Optimizing Allocation of Sales Effort
  • Using the Gompertz Curve to Allocate Supermarket Shelf Space
  • Summary
  • Exercises
  • Chapter 33 Forecasting Sales from Few Data Points
  • Predicting Movie Revenues
  • Modifying the Model to Improve Forecast Accuracy
  • Using 3 Weeks of Revenue to Forecast Movie Revenues
  • Summary
  • Exercises
  • Part IX Advertising
  • Chapter 34 Measuring the Effectiveness of Advertising
  • The Adstock Model
  • Another Model for Estimating Ad Effectiveness
  • Optimizing Advertising: Pulsing versus Continuous Spending
  • Summary
  • Exercises
  • Chapter 35 Media Selection Models
  • A Linear Media Allocation Model
  • Quantity Discounts
  • A Monte Carlo Media Allocation Simulation
  • Summary
  • Exercises
  • Chapter 36 Pay per Click (PPC) Online Advertising
  • Defining Pay per Click Advertising
  • Profitability Model for PPC Advertising
  • Google AdWords Auction
  • Using Bid Simulator to Optimize Your Bid
  • Summary
  • Exercises
  • Part X Marketing Research Tools
  • Chapter 37 Principal Components Analysis (PCA)
  • Defining PCA
  • Linear Combinations, Variances, and Covariances
  • Diving into Principal Components Analysis
  • Other Applications of PCA
  • Summary
  • Exercises
  • Chapter 38 Multidimensional Scaling (MDS)
  • Similarity Data
  • MDS Analysis of U.S. City Distances
  • MDS Analysis of Breakfast Foods
  • Finding a Consumer’s Ideal Point
  • Summary
  • Exercises
  • Chapter 39 Classification Algorithms: Naive Bayes Classifier and Discriminant Analysis
  • Conditional Probability
  • Bayes’ Theorem
  • Naive Bayes Classifier
  • Linear Discriminant Analysis
  • Model Validation
  • The Surprising Virtues of Naive Bayes
  • Summary
  • Exercises
  • Chapter 40 Analysis of Variance: One-way ANOVA
  • Testing Whether Group Means Are Different
  • Example of One-way ANOVA
  • The Role of Variance in ANOVA
  • Forecasting with One-way ANOVA
  • Contrasts
  • Summary
  • Exercises
  • Chapter 41 Analysis of Variance: Two-way ANOVA
  • Introducing Two-way ANOVA
  • Two-way ANOVA without Replication
  • Two-way ANOVA with Replication
  • Summary
  • Exercises
  • Part XI Internet and Social Marketing
  • Chapter 42 Networks
  • Measuring the Importance of a Node
  • Measuring the Importance of a Link
  • Summarizing Network Structure
  • Random and Regular Networks
  • The Rich Get Richer
  • Klout Score
  • Summary
  • Exercises
  • Chapter 43 The Mathematics Behind The Tipping Point
  • Network Contagion
  • A Bass Version of the Tipping Point
  • Summary
  • Exercises
  • Chapter 44 Viral Marketing
  • Watts’ Model
  • A More Complex Viral Marketing Model
  • Summary
  • Exercises
  • Chapter 45 Text Mining
  • Text Mining Definitions
  • Giving Structure to Unstructured Text
  • Applying Text Mining in Real Life Scenarios
  • Summary
  • Exercises
  • Index
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