Download - Steamer Projections

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Page 1: Steamer Projections

Steamer Projections

Page 2: Steamer Projections

The Basics of Projection SystemsForecasting the upcoming season is essentially the same as determining current ability.Most projection systems are modifications on the same simple system (Marcel “the monkey):

Weighs stats from more recent seasons more heavily

Regress to the mean

Why regress to the mean?Results = Ability + Luck

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Two Examples of Marcel in Action

18.3%23.0%

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SteamerAlong with most “fancier” systems:

Uses adjusted minor league statistics in addition to MLB stats.

Adjusts for home ballparks, league, starting v. relieving

What makes Steamer distinct: We use a different system for each component (K%,

BB%, HR%…) We regress to a different “prior” for each player

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Projecting Joaquin Benoit’s K% in 2011:4 possible forecasts

28.0%

26.1% 23.7%

24.9%

Actual K%: 26.1%

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K/PA for All Pitchers: 1993-2011

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HR/PA for All Pitchers: 1993-2011

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Regression is Bayes

Distribution of MLB talent

ProjectionLikelihood of player statisticsGiven different levels of talent

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K% v. FBV for Starters

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K% v. FBV for Relievers

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Matt Thornton 2012

24.0% 27.2%

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Marcel error v. Fastball Velocity

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More regression = Stronger Relationship

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It might be working…

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Where to go from here?For Pitchers:

Develop a better measure of stuff than fastball velcoity Jeremy Greenhouse: StuffRV based on velocity and

movement Josh Kalk/Brooksbaseball: Similarity Scores based on

pitchf/x

For Hitters: Can something similar be done with hitf/x? Trackman?

Speed off the bat Trajectory