1 / 13

A Factorial Design for Baseball

A Factorial Design for Baseball. Dr. Dan Rand Winona State University. When it was a game, not a poorly run business. How was baseball designed? Abner Doubleday in Cooperstown, or Alexander Cartwright in Hoboken, NJ? Baseball is a beautifully balanced game !.

zamir
Download Presentation

A Factorial Design for Baseball

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. A Factorial Design for Baseball Dr. Dan Rand Winona State University

  2. When it was a game, not a poorly run business • How was baseball designed? • Abner Doubleday in Cooperstown, or Alexander Cartwright in Hoboken, NJ? • Baseball is a beautifully balanced game !

  3. Distance to bases (infield single) Catcher's throw to catch a base stealer Diamond - why not pentagon or oval? Irregular dimensions - home run fences How many outs ? How many strikes ? How many bases ? Foul ball areas Look at balance of baseball that developed in 1800’s:

  4. Baseball strategy is optimization • leftie vs. rightie (pitcher vs. batter) • Pitcher days between starts • Maximize runs - sacrifice, hit and run, swing away

  5. Balance through product modification • 40 years of trial and error experimentation, then • Ball changed in Babe Ruth's time • Mound raised in 1968. • Designated hitter in 1973. • Home run totals of 1996-2001

  6. We could do it all in 1 experiment • If statisticians invented baseball instead of baseball inventing statisticians… • “Build it, and they will come”

  7. Baseball Design Factors • A - Infield shape/ number of bases - diamond, pentagon • B - outs - 3, 4 • C-Distance to bases - 80 feet, 100 feet • D - foul ball areas - areas behind first, home, and third, or unlimited • E - strikes for an out - 2, 3 • F - fences - short, long • G - Height of pitcher’s mound - low, high

  8. Measurements - trials are innings • # hits, walks, total bases • % infield hits (safe at 1B as % of infield balls in play) • % of outs that are strike-outs • % of outs that are foul-outs • % caught stealing • % baserunners that score • total runs

  9. How many innings ? • Test 7 factors (rules) one-at-a-time, say we need 16 innings at each level • 16 x 7 x 2 (levels) = 224 innings • At what levels are the other 6 factors ? • Full factorial experiment - every combo of 7 factors at 2 levels, 27 = 128 combos • Any factor has 64 innings at its low level, and 64 innings at its high level

  10. A full factorial gives info about every interaction • Interaction = the phenomenon when the effect of one factor on a response depends on the level of another factor.

  11. One trial of a full factorial • A - Infield shape= 5 sides, 5 bases • B - outs = 3 • C-Distance to bases = 100 feet • D - foul ball areas = unlimited • E - strikes for an out = 3 • F - fences = long • G - Height of pitcher’s mound = low

  12. The power of fractional factorials • For 16 innings, each level, each factor: what can we get out of 32 innings? • Can't run every combination - what do we lose? • We can't measure every interaction separately.

  13. The power of fractional factorials • Needed assumptions: • 3-factor interactions don't exist in this model • 2 2-factor interactions can be pre-determined as unlikely to exist. • Then we only need 32 of the 128 combinations • Let’s play ball !

More Related