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6. C H A P T E R. Market Potential and Sales Forecasting. Market = Industry (Category) Think about the product/industry of your choice. Major Topics for Ch. 6. Potential versus Forecasting Estimating Market Potential and Sales Potential Sales Forecasting & Methods*
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6 C H A P T E R Market Potential and Sales Forecasting Market = Industry (Category) Think about the product/industry of your choice
Major Topics for Ch. 6 • Potential versus Forecasting • Estimating Market Potential and Sales Potential • Sales Forecasting & Methods* • Forecasting Method Usage* • What You need: Forecast for (the industry and your firm)
Definitions of Key Terms • Potential • Maximum sales (Saturation) attainable under a given set of conditions within a specified period of time • Demand • Customer wants that are backed by buying power 3. Forecast • Amount of sales expected to be achieved under a set of conditions within a specified period of time
1. Potential versus Forecasts Present Condition Possibilities Sales Potential Sales Forecast Firm/Brand Industry (Category) Market Forecast Market Potential
Measuring Potential Market Potential - Prosperity Demand Market Minimum Marketing Expenditure
Market Potential 1. Hard to get it right 2. Fixed or Dynamic?* 3. Major Uses of Market Potential Estimates • To make entry / exit decisions • To make resource-level decisions (firm level) • To make location and other resource allocation decisions (product level) • To set objectives and evaluate performance • As a base for sales forecasting
Market Potential (Cont’d) 4. Major Drivers of Market Potential* • Relative Advantage • Compatibility • Risk • Role of Similar Products (caveat) • Coffee: Starbucks • Video game console: Nintendo
2. Estimating Market Potential 1.Determine the “potential” buyers or users of the product. customer analysis 2. Determine how many individual customers are in the potential groups of buyers defined in step 1. 3. Estimate the potential purchasing or usage rate. 4. 2 X 3 Market potential
Estimating Area Potential (for Retailing) Sales and Marketing Management Magazine: Buying Power Index : .2 * (percentage of the population of the area) + .3 * (percentage of the retail sales of the area) + .5 * (percentage of the disposable income)
1. Potential versus Forecasts Present Condition Possibilities Sales Potential Sales Forecast Firm/Brand Industry (Category) Market Forecast Market Potential
3. Sales Forecasting 1. How Are Forecasts Being Used? • To answer “what if” questions • To help set budgets • To provide a basis for a monitoring system • To aid in production planning • By financial analysts to value a company • Four Major Variables to Consider* • Customer Behavior • Past and Planned Product Strategies • Competition • Environment (ex: national economic condition)
Four Sales Forecasting Methods** 1. Judgment methods, which rely on pure opinions. 2. Customer-based methods, which use customer data. 3. Sales Extrapolation methods. 4. Association/causal methods, model relating market factors to sales.
1. Four Judgmental Methods • Naïve extrapolation - takes most current sales and adds a judgmentally determined x%. • Sales Force - ask salespeople calling on retail account to forecast sales. • Executive Opinion - marketing manager opinion to predict sales based on experience.* • Delphi Method - a jury of experts sent a questionnaire and estimates sales and justifies the number.
2. Two Customer-based Methods • Market testing - uses primary data collection methods to predict sales. • Market surveys - using purchase intention questions to predict demand. (especially for B2B products)
3. Three Sales Extrapolation Methods • Extrapolation - linearly extrapolates time series data*. • Moving Averages - uses averages of historical sales figures to make a forecast.* • Exponential Smoothing - relies on the historical sales data and is more complicated than the moving average.
Sales s = 85.4 + 9.88 (time) • 174.5 • • • • • • • • • • • • • • • • Time Time-Series Extrapolation
4. Four Association/Causal Methods • Correlation. Ex) Soft drink • Regression Analysis* : Time + Other Relevant Explanatory Variables • Leading Indicators. • Econometric Models: Multiple Equations
An Example of Forecasting:Developing Regression Models for Forecasting • Plot Sales Over Time • Consider the Variables that Are Relevant to Predicting Sales • Collect Data • Analyze the Data • Examine the correlations among the independent variables • Develop and Run the regression • Determine the significant predictors
Cereal Data Correlation Matrix* The numbers in each cell are presented as: correlation, (sample size), significant level
Regression Results: Cereal Data* Numbers in ( ) are standard errors
Using Forecasts in Practice • Some points to remember • Do sensitivity analysis • Examine Big Residuals* • You will likely miss turning points • Report Format
What You Need for the Term Project Get Forecast for • industry sales • your firm sales
Four Sales Forecasting Methods** 1. Judgment methods, which rely on pure opinions. 2. Customer-based methods, which use customer data. 3. Sales Extrapolation methods. 4. Association/causal methods, model relating market factors to sales.