How to Catch a Tiger: Understanding Putting Performance on the PGA TOUR
-
, and
Existing performance metrics utilized by the PGA TOUR have biases towards specific styles of play, which make relative player comparisons challenging. Our goal is to evaluate golfers in a way that eliminates these biases and to better understand how the best players maintain their advantage.Through a working agreement with the PGA TOUR, we have obtained access to proprietary ShotLink data that pinpoints the location of every shot taken on the PGA TOUR. Using these data, we develop distance-based models for two components of putting performance: the probability of making the putt and the remaining distance to the pin conditioned on missing. The first is modeled through a logistic regression, the second through a gamma regression. Both models fit the data well and provide interesting insights into the game. Additionally, by describing the act of putting using a simple Markov chain, we are able to combine these two models to characterize the putts-to-go for the field from any distance on the green for the PGA TOUR. The results of this Markov model match both the empirical expectation and variance of putts-to-go.We use our models to evaluate putting performance in terms of the strokes or putts gained per round relative to the field. Using this metric, we can determine what portion of a players overall performance is due to advantage (or loss) gained through putting, and conversely, what portion of the players performance is derived off the green. We demonstrate with examples how our metric eliminates significant biases that exist in the PGA TOURs Putting Average statistic. Lastly, extending the concept of putts gained to evaluate player-specific performance, we show how our models can be used to quickly test situational hypotheses, such as differences between putting for par and birdie and performance under pressure.
©2011 Walter de Gruyter GmbH & Co. KG, Berlin/Boston
Articles in the same Issue
- Article
- Adjusting Winning-Percentage Standard Deviations and a Measure of Competitive Balance for Home Advantage
- Comparing Team Performance of the English Premier League, Serie A, and La Liga for the 2008-2009 Season
- Optimal Targets for the Bank Shot in Men's Basketball
- Model Averaging in Factor Analysis: An Analysis of Olympic Decathlon Data
- How to Catch a Tiger: Understanding Putting Performance on the PGA TOUR
- Having the Second Leg at Home - Advantage in the UEFA Champions League Knockout Phase?
- Study of the Technical and Tactical Variables Determining Set Win or Loss in Top-Level European Men's Volleyball
- Socioeconomic Predictors of the 2010 FIFA World Cup
- Yellow Cards: Do They Matter?
- The ISOPAR Method: A New Approach to Performance Analysis in Golf
Articles in the same Issue
- Article
- Adjusting Winning-Percentage Standard Deviations and a Measure of Competitive Balance for Home Advantage
- Comparing Team Performance of the English Premier League, Serie A, and La Liga for the 2008-2009 Season
- Optimal Targets for the Bank Shot in Men's Basketball
- Model Averaging in Factor Analysis: An Analysis of Olympic Decathlon Data
- How to Catch a Tiger: Understanding Putting Performance on the PGA TOUR
- Having the Second Leg at Home - Advantage in the UEFA Champions League Knockout Phase?
- Study of the Technical and Tactical Variables Determining Set Win or Loss in Top-Level European Men's Volleyball
- Socioeconomic Predictors of the 2010 FIFA World Cup
- Yellow Cards: Do They Matter?
- The ISOPAR Method: A New Approach to Performance Analysis in Golf