1 / 52

TM 745 Forecasting for Business & Technology Dr. Frank Joseph Matejcik

TM 745 Forecasting for Business & Technology Dr. Frank Joseph Matejcik. 3rd Session 2/11/08: Chapter 3 Moving Averages and Exponential Smoothing . South Dakota School of Mines and Technology, Rapid City . Agenda & New Assignment. ch3(1,5,8,11) Tentative Schedule

siobhan
Télécharger la présentation

TM 745 Forecasting for Business & Technology Dr. Frank Joseph Matejcik

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. TM 745 Forecasting for Business & TechnologyDr. Frank Joseph Matejcik 3rd Session 2/11/08: Chapter 3 Moving Averages and Exponential Smoothing South Dakota School of Mines and Technology, Rapid City

  2. Agenda & New Assignment • ch3(1,5,8,11) Tentative Schedule • Chapter 3 WK (with odd diversions) • Try to use ForecastX for Autocorrelation • Business Forecasting 5th Edition J. Holton Wilson & Barry KeatingMcGraw-Hill

  3. Tentative Schedule Chapters Assigned 28-Jan 1 problems 1,4,8 e-mail, contact 4-Feb 2 problems 4, 8, 9 11-Feb 3 problems 1,5,8,11 18-Feb President’s Day 25-Feb 4 problems 6,10 3-Mar 5 problems 5,8 10-Mar Exam 1 Ch 1-4 Revised 17-Mar Break 24-Mar Easter 31-Mar 6 problems 4, 7 Chapters Assigned 7-Apr 7 3,4,5(series A) 7B 21-Apr 8 Problem 6 28-Apr 9 05-May Final

  4. Web Resources • Class Web site on the HPCnet system • http://sdmines.sdsmt.edu/sdsmt/directory/courses/2008sp/tm745M021 • Streaming video http://its.sdsmt.edu/Distance/ • Answers will be online. Linked from ^ • The same class session that is on the DVD is on the stream in lower quality. http://www.flashget.com/ will allow you to capture the stream more readily and review the lecture, anywhere you can get your computer to run.

  5. Moving Averages & Exponential Smoothing • All basic methods based on smoothing • 1. Moving averages • 2. Simple exponential smoothing • 3. Holt's exponential smoothing • 4. Winters' exponential smoothing • 5. Adaptive-response-rate single exponential smoothing

  6. Moving Averages • Ex. “Three Quarter Moving Average”(1999Q1+1999Q2+1999Q3)/3 =Forecast for 1999Q4 • Slutsky-Yule effect: Any moving average could appear to be acycle, because it is a serially correlated set of random numbers.

  7. Simple Exponential Smoothing

  8. Simple Exponential Smoothing • Alternative interpretation

  9. Simple Exponential Smoothing • Why they call it exponential property

  10. Simple Exponential Smoothing • Advantages • Simpler than other forms • Requires limited data • Disdvantages • Lags behind actual data • No trend or seasonality

  11. Holt's Exponential Smoothing(Double Holt in ForecastXTM)

  12. ForecastXTM Conventions forSmoothing Constants • Alpha (a) =the simple smoothing constant • Gamma (g) =the trend smoothing constant • Beta (b) =the seasonality smoothing constant

  13. Holt's Exponential Smoothing • ForecastX will pick the smoothing constants to minimize RMSE • Some trend, but no seasonality • Call it linear trend smoothing

  14. Winters'

  15. Adaptive-Response-Rate Single Exponential Smoothing

  16. Adaptive-Response-Rate Single Exponential Smoothing • Adaptive is a clue to how it works • No direct way of handling seasonality • Does not handle trends • ForecastX has different algorithm

  17. Using Single, Holt's, or ADRES Smoothing to Forecast a Seasonal Data Series • 1. Calculate seasonal indices for the series. Done in HOLT WINTERS ForecastX™. • 2. Deseasonalize the original data by dividing each value by its corresponding seasonal index.

  18. Using Single, Holt's, or ADRES Smoothing to Forecast a Seasonal Data Series • 3. Apply a forecasting method (such as ES, Holt's, or ADRES) to the deseasonalized series to produce an intermediate forecast of the deseasonalized data. • 4. Reseasonalize the series by multiplying each deseasonalized forecast by its corresponding seasonal index.

  19. New-Product Forecasting(growth curve fitting)

  20. Gompertz Curve

  21. Logistic Curve

  22. Bass Model (See Chapter 1,too)

  23. Event Modeling • Event Indices Legend 0. No event present • Free-standing inserts (FSIs) • FSI/radio, television, print campaign • Load (trade promotion) • Deload (month after effect of load) • Thematics (themed adg campaign) • Instant redeemable coupon (IRC)

  24. Forecasting Jewelry Sales using Exponential Smoothing

  25. Forecasting Jewelry Sales using Exponential Smoothing

  26. Forecasting Houses Sold Sales using Exponential Smoothing

  27. Forecasting Houses Sold Sales using Exponential Smoothing

  28. Summary • All basic methods based on smoothing • 1. Moving averages • 2. Simple exponential smoothing • 3. Holt's exponential smoothing • 4. Winters' exponential smoothing • 5. Adaptive-response-rate single exponential smoothing • Use of Deseasonalized Series • techniques not clear winners

  29. Integrative Case: The Gap

  30. Solutions toCase Questions #1

More Related