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Lecture 4 Demand in Business Forecasting

Lecture 4 Demand in Business Forecasting. Application of the law of demand is not simple or we would not be here. In a highly competitive world, successful application of the law of demand can have a significant impact on profits. Why Demand Is Not Easy to Measure.

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Lecture 4 Demand in Business Forecasting

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  1. Lecture 4Demand in Business Forecasting Application of the law of demand is not simple or we would not be here. In a highly competitive world, successful application of the law of demand can have a significant impact on profits.

  2. Why Demand Is Not Easy to Measure • Changes in the design of products and entry of new products mean limited lifecycles. Such changes make forecasting demand more difficult because you use data from previous products and time periods. • Expanding business to new markets means new demographics (customer base), facing new competitors, different seasonal factors, packaging requirements, and distributional channels create mini-markets within a product market. Constant change in markets means changes in demand.

  3. Accurate Measures Difficult • Difficulty in interpretation of historical data: Sales, orders, shipments and invoices are historical data that can cause confusion. • This may be innocent; evidence of theft; evidence of bad record keeping. The numbers rarely match up. Besides trying to measure demand; an opportunity to try to understand company data accuracy.

  4. Measurement Difficulties • Sales at one time may not reflect future demand as it may be affected by substitutes or other factors that may not be relevant in the next time period. • Demand is often underestimated when based on sales data. Example: were sales in a given time period actual demand or did the stock run out, thereby cutting sales (under-measuring real demand)?

  5. Demand Forecasting • Demand forecasts are statistical estimates for the future. Forecasts can be improved by determining probability distributions for demand points by location and for specific times. • Try to measure the degree to which actual demand deviates from prior demand forecasts. Improve point estimates. • Based on experimenting with data, determine relevant time period. Example: Anheuser-Busch uses five-year historical data to better understand product lifecycles and seasonal demand.

  6. Improving Demand Measures • Detailed point-of-sale data (bar codes on products) allows better estimates. These can be compared to vendor inventory or other data sources to check accuracy. • Revision is a good idea as time passes—were the estimates made six months ago for next year still the best estimate?

  7. Improving Demand Measures • More measures of possibly relevant factors: competitor prices, regional events, demographics, and weather. Some of this information is low cost. Computer time is low cost. Analysis is not. • Remember: the better we forecast demand for output, the better we control inputs (cost).

  8. Improving Measures • RFID (radio frequency identification devices) provide sellers and buyers better control of point-of-sale measures and inventory from production through distribution to the shelf level. Wal-Mart demands this—where are all goods at all times.

  9. Improving Demand Visibility • Data collected more frequently provides better estimates of forecasts. • More detailed data provides chance for greater accuracy. • Data from different functional areas: sales, marketing, finance, logistics ─ allow for cross checks and possible insights (theft?).

  10. Benefits of Good Measures • Information and forecasting is not costless, but a 10% improvement in forecasting can increase profits by reducing: number of lost sales; costs of handling excess goods; and the costs of insuring and storing excess inventory. • Firms that estimate demand can reduce costs, set prices more accurately, and increase profits.

  11. Similar points from the Harvard Business Review Studies of companies show many pricing errors due to lack of internal controls. Common problems: Invoices do not match prices quoted. Discounts granted by sales agents are larger than needed (difference between agent’s incentive and what is best for the firm). Inconsistent pricing by different sales reps—some give bigger discounts than others.

  12. Practical Notes from HBR Common pricing/sales problems: Sales reps do not properly assess or understand customers’ needs (their demand). More background needed prior to their visits. Know your customers. Sales reps insist on quick response from pricing analysts to finalize sale, leading to snap decisions (more mistakes). Sales reps also guaranteed prices to customers, forcing management to accept without review. Solutions: Better review & communications.

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