STATSWING

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STATSWING

STATSWING

@STATSWINGcom

Sports intelligence institution.

Inscrit le Temmuz 2025
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STATSWING
STATSWING@STATSWINGcom·
STATSWING assessment grades were retrodiction tested across 9 seasons: 11,474 player-grades, 8,300 validated outcomes. Players graded SW-1 (Elite) produced 3.44× the following-season per-90 output of players graded SW-6. Each tier predicted higher output than the one below.
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STATSWING
STATSWING@STATSWINGcom·
Companion technical note, 'Do Body-Pose Features Improve Shot Outcome Prediction?' When body-pose features derived from STATSWING's kinetic chain framework are made available alongside event-context metadata, the model relies exclusively on the mechanical features for prediction. All 10 of the top 10 features by SHAP importance are mechanical - upper body twist, hip angle asymmetry, and maximum knee angle ranking highest. Proof-of-concept: statswing.com/research/mecha
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STATSWING
STATSWING@STATSWINGcom·
The football transfer market's predictive infrastructure operates on a single analytical layer – statistical actions – while the layer that most determines whether those actions replicate in a new environment is structural execution quality: mechanics. The field conflates what a player does, the technique they select, and the mechanical quality of their execution into a single unit of measurement. This conflation propagates through every model, composite rating, and "league exchange rate" that consumes action-level data as its input. The data infrastructure to assess mechanics already exists in football's top leagues - 29 skeletal points per player, captured at up to 100 frames per second. The analytical products to use it have not been built - though basketball has demonstrated that they can be. Our latest publication SW-R-2026-003, 'Mechanics as the Missing Variable in Transfer Prediction.' statswing.com/research/mecha…
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STATSWING
STATSWING@STATSWINGcom·
The system grades 18,000+ players across 20+ leagues on four dimensions: -Statistical (position-specific, league-adjusted) -Market signal -Pattern intelligence -Proprietary assessment Six tiers, SW-1 (Elite) to SW-6 (Below Standard). Modifiers, confidence bands, trajectory.
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STATSWING
STATSWING@STATSWINGcom·
A reader raised three methodological concerns about the possession-adjusting paper. They were substantive, so we ran three stronger designs to test them. The suppression mechanism – that centre-backs on dominant teams tackle less because they face fewer defensive actions – is real and statistically significant across all three. It is also small: A within-player fixed-effects model across 6,880 match observations estimates the effect at roughly 0.07 fewer tackles per 90 across the full gap between dominant and weak teams; less than 5% of the mean. Standard implementations correct for something an order of magnitude larger, which strengthens the original study's practical recommendations. Read the follow-up companion paper here: statswing.com/research/posse…
STATSWING@STATSWINGcom

Possession-adjusting individual centre-back statistics rests on an assumption: that dominant-team defenders face fewer defensive actions, so their numbers need correcting upward. We tested that assumption across 431 centre-backs, and the relationship it assumes does not exist at the player level. 🧵:

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STATSWING@STATSWINGcom·
4/ Basketball's pace adjustment works because possessions are discrete, countable events. Football's are not — which is why other sports moved toward evaluating each defensive action in context rather than adjusting the total count. Football's possession adjustment sits at the stage those sports moved past.
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STATSWING@STATSWINGcom·
Possession-adjusting individual centre-back statistics rests on an assumption: that dominant-team defenders face fewer defensive actions, so their numbers need correcting upward. We tested that assumption across 431 centre-backs, and the relationship it assumes does not exist at the player level. 🧵:
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STATSWING@STATSWINGcom·
When confidence compounds through the recruitment stack without epistemic correction, the original measurement gap propagates to the decision layer. We propose a framework for bounding recruitment certainty. SW-R-2026-002. statswing.com/research/epist…
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STATSWING retweeté
Joel A. Adejola
Joel A. Adejola@JoelAdejola·
Set pieces now produce one in four Premier League goals. The metric everyone uses to evaluate aerial ability doesn't count the majority of aerial contests. I wrote about why, and what should replace it. statswing.com/research/aeria…
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STATSWING
STATSWING@STATSWINGcom·
The industry-standard aerial duel metric records a contest only when both players leave the ground. In a single-match case study, this definition excluded 80% of contested aerial situations. SW-R-2026-001 proposes a revised measurement framework. statswing.com/research/aeria…
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