1 / 30

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

TM 745 Forecasting for Business & Technology Dr. Frank Joseph Matejcik. 9th Session 4/21/08: Chapter 8 Combining Forecast Results. South Dakota School of Mines and Technology, Rapid City . Tentative Schedule. Chapters Assigned 28-Jan 1 problems 1,4,8 e-mail, contact

marty
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 9th Session 4/21/08: Chapter 8 Combining Forecast Results South Dakota School of Mines and Technology, Rapid City

  2. 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 14-Apr Out of town No class 21-Apr 8 Problem 6 28-Apr 9 05-May Final

  3. 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.

  4. Agenda & New Assignment • Chapter 8 problem 6, Chapter 9 no problems • Final is in two weeks • Study guide is posted • Chapter 8 Combining Forecast Results • We will do the student opinion survey

  5. Combining Forecast Results • Intro • Bias • Ex. What can be combined? • How to get the weights? • Three techniques • Delfield • About ForecastX & combining

  6. Introduction • 83% of experts believe that combining forecasts will produce more accurate forecasts than originals Collopy & Armstrong (1992) • Bates & Granger (1969) 1st idea • Why the best forecast may not be • 1) Some variables may be missing • 2) Discarded forecast may use a type of relation ship ignored in the best forecast

  7. Bias • Unbiased here not used strictly as in Statistics • Statistics term unbiased • 1) a strong property of a statistics • 2) excludes reasonable statistics • Forecasters believes may influence forecasts • Try to ignore preconceived ideas • Fresh employees may help

  8. An Example • Output indexes of Gas, Electricity, & Water • Linear Fit

  9. An Example: Exponential fit • Uses a transform to fit it

  10. An Example: Combined fit • Combined Improvements • 1) Optimal weights yield considerable improvements • 2) combined forecasts statement 2)page 395 is not quite correct. It happens. See table 8-1 (Separate File)

  11. What Forecasts Are Combined? • Actual Practice try very different models • 1) Extract different predictive factors • a) transforms • b) model format • 2) Models use different variables • Air Travel Forecast • 1) Judgmental (Expert survey) • 2) Extrapolation (time series) • 3) Segmentation (Customer survey) • 4) Econometric (Causal regression)

  12. What Forecasts Are Combined?

  13. Choosing Weights for Combined Forecasts • Armstrong likes equal weights (ex ante) • MAPE’s reduced 6.6% • Better if >2 forecasts • Bates & Granger weight more accurate more heavily • In general combined forecast have smaller errors (ex’s b&w) • Book suggests weight more accurate more heavily

  14. 3 Techniques for Selecting Weights • 1) Minimize variances of forecasts • 2) Adaptive weights based on each error • 3) Use regression on the forecasts. (Optimal linear composite)

  15. Minimize variances of forecasts

  16. Adaptive weights based on each error

  17. Optimal linear composite

  18. Optimal linear composite procedure • Constant term is found and tested, if tested to be in the model don’t apply it. • Comment b1 + b2 = about 1, b1, b2 > 1 • Comment F(1) & F(2) will likely haveconstant terms. So?

  19. Regression for Combining: Household Cleaner, application • Sales by Sales Force Composite • Sales by Winter’s Method

  20. Regression for Combining: Household Cleaner, application • Run usual regression • Force constant to be zero • Improved

  21. Forecasting THS with a Combined Forecast • Time Series Decomposition chapter 6 • Multiple regression chapter 5THS=106.31 – 10.78(MR) - 0.45(ICS) • THS = -2.54+0.06(THSRF)+0.97(THSDF) (-1.2) (1.53) (31.8) • THS = 0.03(THSRF) + 0.97(THSDF) • RMSE combined 3.54 • RMSE THSDF Winter’s 3.55

  22. Forecasting THS with a Combined Forecast

  23. Forecasting DCS with a Combined Forecast

  24. Forecasting DCS with a Combined Forecast

  25. Comment from the field • Delfield Company Food Service Co. • 4th edition table below

  26. Integrative Case: The Gap 4th

  27. Integrative Case: The Gap 4th

  28. Integrative Case: The Gap 4th

  29. Using ForecastXTM to Combine Forecasts • It is just the regression that was given, so just remember to check the no intercept box.

  30. We will do the student opinion survey, now.

More Related