Abstract
The ATP finals is the concluding tournament of the tennis season since its initiation over 50 years ago. It features the 8 best players of that year and is often considered to be the most prestigious event in the sport other than the 4 grand slams. Unlike any other professional tennis tournament, it includes a round-robin stage where all players in a group compete against each other, making it a unique testbed for examining performance under forgiving conditions, where losing does not immediately result in elimination. Analysis of the distribution of final group standings in the ATP Finals for singles from 1972 to 2021 reveals a surprising pattern, where one of the possible and seemingly likely outcomes almost never materializes. The present study uses a model-free, optimization approach to account for this distinctive phenomenon by calculating what match winning probabilities between players in a group can lead to the observed distribution. Results show that the only way to explain the empirical findings is through a “paradoxical” balance of power where the best player in a group shows a vulnerability against the weakest player. We discuss the possible mechanisms underlying this result and their implications for match prediction, bettors, and tournament organization.
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Author contributions: All the authors have accepted responsibility for the entire content of this submitted manuscript and approved submission.
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Research funding: None declared.
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Conflict of interest statement: The authors declare no conflicts of interest regarding this article.
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Articles in the same Issue
- Frontmatter
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- A peculiar phenomenon and its potential explanation in the ATP tennis tour finals for singles
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Articles in the same Issue
- Frontmatter
- Research Articles
- A roster construction decision tool for MLS expansion teams
- Home advantage and crowd attendance: evidence from rugby during the Covid 19 pandemic
- A peculiar phenomenon and its potential explanation in the ATP tennis tour finals for singles
- Kelly criterion and fractional Kelly strategy for non-mutually exclusive bets
- Augmenting adjusted plus-minus in soccer with FIFA ratings