Revisiting pitch framing with BART

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Abstract

The advent of high-resolution pitch tracking data (PITCHf/x) has facilitated many quantitative analyses of “pitch framing.” Framing refers to the ability of Major League Baseball catchers to catch a pitch in such a way as to increase the chance that the umpire calls the pitch a strike. Multiple analyses, utilizing a range of modeling techniques, all suggest that framing can have an outsize effect, with a good framer able to save his team anywhere on the order of 20 - 50 runs over the course of a season. In this talk, I will describe one such analysis based on fitting a hierarchical Bayesian model that “borrows strength” between umpires. I will discuss some new refinements to this analysis, focusing on new models for the called strike probabilities and the value of a called strike based on Bayesian additive regression trees.

Description

CAM / DoMSS Seminar
Monday, August 28
1:30pm
WXLR A302
For those joining remotely, email Richard Hahn for the Zoom link.

Speaker

Sameer Deshpande
Assistant Professor, Statistics
University of Wisconsin

Location
WXLR A302