Group L · Matchday 3

CroatiavsGhana

2026-06-27·17:00 localPredictions finalised

Snapshot · 2026-07-14Model 1.0.0Final prediction · locked 27 Jun, 18:56 UTCCroatia·Ghana·Head-to-head →·
Full time · forecast gradedCroatia 2 1 GhanaThe locked pre-match forecast has been graded against this result.See the calibration recap →

The forecast

Match-outcome probability

  • Croatia win
    55.0%
  • Draw
    27.5%
  • Ghana win
    17.5%

A 427-point Elo gap frames this as a significant mismatch, yet the model still gives Ghana a 8% probability of a result — enough to make this more than a formality.

Rank checkFIFA ranks Ghana #72 in the world; the model ranks them #33 in this tournament field, 39 places higher than the FIFA list suggests. All 48 compared →
Likeliest score1–016.3%
First goal0-15'31.4%
Both teams score38.5%
Over 2.5 goals39.3%
Top scorerBudimir11.7%
Expected goals1.6 - 0.6
Loading pitch visualisation...

Why the model says this

Favoring Croatia

  • ·Croatia holds a significant Elo rating advantage, with a delta of 427 points over Ghana.
  • ·Croatia is ranked significantly higher in FIFA rankings at 10th globally, compared to Ghana's 72nd position.
  • ·Croatia's expected goals (xG) for this fixture are 1.77, substantially higher than Ghana's 0.62 xG.
  • ·The Elo model specifically gives Croatia an 81.1% win probability, indicating a strong statistical advantage.

Favoring Ghana

  • ·Ghana's 'Counter-attacking' archetype, characterised by a lower build-up (5.3 passes/attack) and higher directness (6.6 index) compared to Croatia's more patient build-up (7.1 passes/attack) and lower directness (5.2 index), suggests a tactical approach that could exploit transitions.
  • ·Ghana has secured two wins in competitive FIFA World Cup qualification matches (1-0 and 5-0) within their last six fixtures, demonstrating an ability to perform in crucial games.

What the model can't fully price

  • ·Two players across both squads are carrying fitness doubts. The model does not currently adjust for specific lineup changes or player absences.

Form check

Croatia

Steady

Croatia has shown strong form in competitive fixtures, securing four wins and one draw in their last five FIFA World Cup qualification matches. Their recent friendly results are mixed, with one win and one loss.

4 wins in their last 5 FIFA World Cup qualification matches.

Ghana

Declining

Ghana's recent form is concerning, marked by four consecutive losses in friendly matches, including a 5-1 defeat. Prior to this, they secured two wins in FIFA World Cup qualification.

4 consecutive losses in their most recent friendly matches.

Analysis

How it plays out

Croatia's structured press game meets Ghana's counter attacker shape. Ghana will concede territory deliberately and look to hit the spaces Croatia's high line leaves behind. Croatia will expect to hold 54% possession. Ghana need their shape to stay compact without the ball and be clinical when they win it back.

What decides it

Croatia press high (PPDA 20.4). If the press doesn't win the ball early, the space behind their back line becomes exposed. Ghana will concede possession willingly and attack in transition. Their defensive block needs to hold without fouling in dangerous areas. The scoring threat is evenly split: Ante Budimir (11.7%) and Jordan Ayew (11.4%).

Off the pitch

Zlatko Dalić (9 years in charge of Croatia) vs Carlos Queiroz (0 years). That tenure gap shows up in squad familiarity and set-piece coordination.

The angle

The model gives Ghana just 12.2% to win. Every World Cup produces group-stage upsets; the question is whether this fixture is one of them.

Goals & scorelines

Likeliest score 1–0 (16.3%) · xG 1.6 - 0.6

Expected goals

Croatia
1.62
Ghana
0.64

Mean of the Dixon-Coles joint goal distribution. Same fit that produces the most-likely-scoreline list below.

Most likely scorelines

  • 1–0
    16.3%
  • 2–0
    13.8%
  • 1–1
    11.4%
  • 0–0
    11.1%
  • 2–1
    8.8%

From the Dixon-Coles joint Poisson with the low-score correction. Scorelines are listed in probability order; this is a description of the model's distribution, not a recommendation.

Most likely half-time scorelines

  • 0–0
    32.8%
  • 1–0
    25.7%
  • 2–0
    10.6%
  • 0–1
    9.8%
  • 1–1
    8.9%

Same Dixon-Coles fit as the full-time list above, with rates halved to a 45-minute window and the low-score correction applied to that 1st-half block. The 0-0 row sits higher here than at full-time because fewer minutes have elapsed.

Goal totals

  • More than 0.5 goals
    88.9%
  • More than 1.5 goals
    66.6%
  • More than 2.5 goals
    39.3%
  • More than 3.5 goals
    19.3%
  • More than 4.5 goals
    7.9%
  • More than 5.5 goals
    2.8%
  • Both teams score
    38.5%

Each row is the probability the match finishes with more than the listed number of goals. Both-teams-to-score is the probability each side scores at least once. All values are marginals of the Dixon-Coles joint goal grid that produces the scoreline list above — not market lines or any other operator construct.

Event-typed probabilities

  • Croatia clean sheetOpposing team scores zero52.9%
  • Ghana clean sheetOpposing team scores zero19.7%

Derived from the same Dixon-Coles joint distribution as the scoreline list. These are descriptive event probabilities — see CLAUDE.md §3/§4 (formerly COMPLIANCE.md §4.2.7) for the framing the project uses.

Win-margin probability

  • Croatia by 4+
    5.3%
  • Croatia by 3+
    14.8%
  • Croatia by 2+
    34.0%
  • Croatia by 1+
    60.6%
  • Draw
    25.7%
  • Ghana by 1+
    13.7%
  • Ghana by 2+
    3.6%
  • Ghana by 3+
    0.7%
  • Ghana by 4+
    0.1%

Each row is the probability the match ends with the listed margin or larger in that direction. Marginal of the Dixon-Coles joint goal grid; the “by 1+” rows plus the draw row sum to 1.

How the match unfolds

Over 2.5 goals 39.3% · BTTS 38.5%

Game state through the match

0%25%50%75%100%0'15'30'45'60'75'90'
  • Croatia ahead61.3%
  • Level24.3%
  • Ghana ahead14.3%

Probability of each game state at minutes 0, 15, 30, 45, 60, 75, 90 — derived from two independent thinned-Poisson processes with the Dixon-Coles per-team rates. The three lines always sum to 1 at each minute. The right column shows the state at the match's closing minute.

When the first goal arrives

  • 0–15
    31.4%
  • 15–30
    21.5%
  • 30–45
    14.8%
  • 45–60
    10.1%
  • 60–75
    7.0%
  • 75–90
    4.8%
  • No goal
    10.4%

Probability the match's first goal arrives in each 15-minute window. Homogeneous Poisson with combined rate λ = λh + λa from the Dixon-Coles fit; the seven rows (six windows + no-goal tail) sum to 1.

Half-time / full-time grid

Joint probability of half-time and full-time results
HT ↓ / FT →HCroatia winDDrawAGhana win
HCroatia ahead40.4%3.6%0.6%
DLevel19.1%17.4%5.8%
AGhana ahead1.8%3.5%7.8%

Each cell is P(half-time result, full-time result). All nine cells sum to 1. Derived from a halved-λ Dixon-Coles fit for the first half plus an independent-Poisson second-half convolution.

Comeback probability

  • Croatia trail at HT, avoid defeat at FT
    5.3%
  • Ghana trail at HT, avoid defeat at FT
    4.2%

Joint probability — P(side trailing at half-time AND avoiding defeat at full-time). NOT conditional on trailing at HT. Derived from the same half-time / full-time decomposition that produces the HT/FT grid above; a tied first half is neither a home nor an away comeback opportunity.

Cards

  • Expected yellow cardsMean of the Poisson on total yellow cards.3.45
  • Total yellows over 2.567.0%
  • Total yellows over 3.545.3%
  • Total yellows over 4.526.5%
  • Any red cardP(at least one red card in the match).9.5%

Referee not yet assigned. Using the 2026 pool-mean per-match rate as a placeholder; the model picks up the referee's personal rate once the assignment is published. Total yellow cards modelled as a Poisson with mean equal to two team baselines plus the referee's deviation from the pool mean. Reds are modelled the same way, independently. See /docs/methodology/.

Teams & players

Top scorer: Budimir (11.7%)

Match detail

Croatia

Model-rated key players: Ante Budimir (FW) — P(scores) 11.7%; Andrej Kramarić (FW) — P(scores) 7.2%; Igor Matanović (FW) — P(scores) 4.9%.

How they play

Croatia under Zlatko Dalić play a structured press game, holding 54% of the ball — among the highest in the tournament field. Their likely shape is a 4-3-3, though they have also used 4-2-3-1. They apply moderate pressing intensity (PPDA 20.4) and build patiently through midfield with 7.1 passes per attacking sequence. They favour high-quality chances (xG/shot 0.142, among the best in the field).

What they must execute

Croatia need their high press to force turnovers in dangerous areas — if opponents can play through the press, the space left behind is vulnerable. Physical conditioning and squad rotation will be critical to sustain pressing intensity across a long tournament. Managing minutes for Ivan Perišić across what could be seven matches will test the coaching staff's rotation planning.

Storylines
Field-best: Joško GvardiolField's #1 defender in the WC2026 pool by composite rating (0.99).
Last dance: Ivan Perišić37 at kickoff with 152 caps — probably his final World Cup.
Teen starter: Luka Vušković19 at kickoff — 4 caps — projected on the bench, the squad's youngest pick.

Ghana

Model-rated key players: Jordan Ayew (FW) — P(scores) 11.4%; Antoine Semenyo (FW) — P(scores) 3.6%; Joseph Paintsil (FW) — P(scores) 3.3%.

How they play

Ghana under Carlos Queiroz play a counter attacker game, with just 43% possession — among the lowest in the field. Their likely shape is a 4-2-3-1, though they have also used 5-3-2. They apply moderate pressing intensity (PPDA 20.2) and move the ball forward quickly at 5.3 passes per attack. They are selective in their shooting (7.5 per 90) and favour high-quality chances (xG/shot 0.140, among the best in the field).

What they must execute

Ghana rely on defensive discipline and quick transitions — absorbing pressure and converting turnovers into attacking chances. Concentration and defensive organisation for full 90-minute stretches will determine whether the approach holds against top opposition. Managing minutes for Jordan Ayew across what could be seven matches will test the coaching staff's rotation planning.

Storylines
Model bold: Model rates them #41 by tournament-winner probability — 31 places higher than FIFA #72.
Touchline: Carlos QueirozAppointed less than 18 months ago. Came in from Oman.
Teen starter: Caleb Yirenkyi20 at kickoff — 10 caps — projected on the bench, the squad's youngest pick.
Workload going in

Croatia's predicted XI averages 2,049 club minutes over the 2024-25 season (moderate load).

Croatia coverage: 68.0% (9/11 XI matched against the FBref Big-5) · Ghana: 35.0% (7/11).

Set-piece outlook

Croatia historically converts 14.2% of xG from set-pieces, contributing 0.23 expected set-piece goals in this fixture. Ghana converts 5.2% from set-pieces (0.03 expected). Combined, the model expects 0.26 set-piece goals across the 90 minutes.

  • P(Croatia scores set-piece goal) 20.6%
  • P(Ghana scores set-piece goal) 3.3%
  • P(set-piece goal in match) 23.2%

Croatia: Luka Modrić on corners (15 corners), Kristijan Jakić on free kicks (per fbref 2022 23) · Ghana: Salis Abdul Samed on free kicks (per fbref 2022 23)

Penalty outlook

If a penalty is awarded to Croatia, the model gives 75.0% conversion, 72.5% for Ghana.

Croatia primary PK: Ante Budimir (2/2 in 2021-22, per fbref 2022 23) · Ghana primary PK: Jordan Ayew (1/1 in 2017-18, per fbref 2022 23).

Derived from the model's per-fixture forecast joint and supporting reference data (predicted squads, set-piece xG share, PK posteriors, club minutes). See /docs/methodology/ for the full methodology.

Tactical forecast

Croatiastructured-press
PPDA
20.4
Possession
54%
Directness (yds/pass)
5.2
Long balls/90
31
Set-piece xG
14%
Ghanacounter-attacker
PPDA
20.2
Possession
43%
Directness (yds/pass)
6.6
Long balls/90
32
Set-piece xG
5%

Style profile per side from StatsBomb open-data aggregation across recent international tournaments (Euro 2020/2024, Copa America 2024, AFCON 2023, World Cup 2018/2022). The tactical-fingerprint badge maps each team’s observed style vector into one of eight canonical archetypes via a rule-based classifier; teams with fewer than three matches of qualifying coverage carry an “insufficient-data” label rather than being forced into a default. Sides outside the StatsBomb-open corpus use FotMob team match stats from recent qualifiers and friendlies instead (possession and shot volume only), marked as partial coverage. PPDA = passes the side allows per defensive action (lower = more intense press). Formation distributions are not yet produced — that head of the §2.7 classifier is pending its own data pull. See /docs/methodology/.

Squad depth

Most irreplaceable starters

Croatia

  1. Dominik LivakovićGoalkeeperCover: Ivor Pandur · 0.510.40gap
  2. Joško GvardiolCentre-backCover: Martin Erlić · 0.690.30gap
  3. Marin PongračićCentre-backCover: Martin Erlić · 0.690.16gap

Ghana

  1. Lawrence Ati-ZigiGoalkeeperCover: Joseph Anang · 0.210.41gap
  2. Thomas ParteyDefensive midfieldCover: Elisha Owusu · 0.270.37gap
  3. Gideon MensahFull-backCover: Marvin Senaya · 0.260.29gap

Gap = how far a side's rating at the position falls from the starter to his likely in-squad replacement (named under each name). Larger = harder to replace. Descriptive metric, does not feed the published probabilities. Methodology →

Match conditions

  • AltitudeNear sea level10 m
  • Avg temperatureFive-year mean over the tournament window24.8 °C
  • Avg humidity70%
  • Heat stressShade WBGT ~26.5 °CLow heat stress
  • Pitch surfacenatural grass

Natural-grass NFL stadium; FIFA-standard hybrid pitch for the tournament.

Heat stress is a shade Wet-Bulb Globe Temperature proxy from the venue's climatology mean temperature and humidity; FIFA mandates cooling breaks at WBGT 32 °C. Evening kickoff (local time). These are long-window averages, not a match-day forecast, and they are not inputs to the forecast.

Top scorers · P(scores in this match)

Ghana

Per-player scoring rate from Model #5 (`p_score_per_match`). Reflects each player's npxG/90, expected minutes, team xG share, and the average opposing-team defence. See /docs/methodology/.

Recent match form

Last match player ratings

Croatia

vs Portugal · avg 7.0

8
Perisic
ATK
DEF
PAS
7
Vlašić
ATK
DEF
PAS
7
Sučić
ATK
DEF
PAS
6
ModrićCM
ATK
DEF
PAS

Worked well: Their early goal and continued creation of scoring opportunities demonstrated their offensive capabilities.

Struggled: A significant weakness was their repeated failure to beat the offside trap, resulting in two disallowed goals.

Ghana

vs Colombia · avg 6.3

9
Ati-ZigiGK
ATK
DEF
PAS
5
ParteyCM
ATK
DEF
PAS
5
SemenyoST
ATK
DEF
PAS

Worked well: Their goalkeeper, Ati-Zigi, delivered an outstanding performance, making crucial saves that prevented Colombia from extending their lead. The defence showed moments of resilience under pressure.

Struggled: Ghana struggled to create sustained attacking pressure and lacked a decisive final pass or shot. They were often caught out by Colombia's swift counter-attacks and lost possession in dangerous areas.

Player scores from official highlight analysis of each team's most recent match. Observational, not a model input. Methodology →

Video analysis: player performance

Per-player ratings and event breakdowns from official highlights analysis. Tap a player to see their full match timeline.

Croatia
9
Dominik Livaković16'–27'

Delivered a commanding performance with multiple vital and stunning saves, keeping Croatia in the match.

2saves

Match timeline

16'16' [save] Croatia's goalkeeper makes a crucial save from Barcenas's shot inside the box.
27'27' [save] Croatia's goalkeeper produces a stunning diving save to deny Blackman's powerful header.
8
Luka Sučić

Opened the scoring for Croatia with a well-placed shot and maintained a persistent attacking threat throughout the match.

8
Ante Budimir

Scored the decisive winning goal for Croatia with a clinical header.

8
Josip Stanišić

Delivered a crucial assist for the winning goal, showcasing his offensive contribution from defense.

6
Nikola Vlašić

Showed attacking intent by hitting the post, but had no further decisive contributions.

6
Martin Baturina45'–45'

Tested the opposition goalkeeper with a strong shot, showing attacking initiative.

1shots1on target

Match timeline

45'45' [save] Panama's goalkeeper, Mosquera, pushes away a well-struck shot from Croatia's Baturina.
6
Harvey

Attempted a shot from inside the box, but it was blocked, indicating some attacking presence.

6
J. Brekalo

Mentioned in observations with a contradictory goal claim, making his actual impact in this match unclear.

6
Player #9

Mentioned with contradictory goal claims that do not align with the match's final score and goal scorers.

6
Player #7

Mentioned with a contradictory goal claim that does not align with the match's final score and goal scorers.

Ghana

Match observations

  • The match was a closely contested affair, with both teams demonstrating moments of attacking prowess.
  • Croatia initially took the lead with a powerful long-range effort, but Ghana responded with a well-executed set-piece goal.
  • The game's decisive moment came from another set-piece, with Croatia securing the victory through a header.

Under the hood

Model-by-model comparison

Croatia vs Ghana

High disagreement (17.1%)
ModelWeightHomeDrawAway
EloRating-based strength estimate32%
78.1%
21.9%
0.0%
Dixon-ColesGoal-process model with low-score correction63%
61.1%
25.4%
13.5%
Hierarchical PoissonBayesian model with confederation pooling6%
61.0%
24.8%
14.2%
Bayesian stackingLearned-weight combination
74.1%
22.8%
3.1%
Ensemble (published)Uniform average + isotonic calibration
67.3%
24.9%
7.9%
Home spread: 17.1%
Draw spread: 3.5%
Away spread: 14.2%
How each model works
Elo
Each team carries a single strength rating updated after every match by a margin-aware K-factor. Match probabilities come from the logistic function of the rating gap. Elo is fast-adapting but coarse — it sees only who won and by how much, not how the goals were scored.
Dixon-Coles
A Poisson regression on team-level attack and defence parameters, fitted via maximum likelihood with an exponential time-decay weighting. The Dixon-Coles correction adjusts the four low-score cells (0-0, 1-0, 0-1, 1-1) where independent Poisson underestimates dependence. Produces full scoreline distributions, not just H/D/A.
Hierarchical Poisson
A Bayesian Poisson model fitted via MCMC (PyMC) with hierarchical priors that pool attack and defence parameters within confederations. Shrinks small-sample teams toward their confederation mean — helpful for nations with few recent competitive fixtures. Slower to fit but better-calibrated on the tails.
Bayesian stacking
Optimises simplex weights (w_elo, w_dc, w_hp) to maximise the leave-one-out log-score across a walk-forward backtest (Yao et al. 2018). The result is a weighted average of the three component models' probabilities, then isotonic-calibrated. Adds no extra features — just learns which component to trust more from historical accuracy.
Ensemble (published)
Equal-weight average of all three component models, followed by per-class isotonic regression calibration fitted on 24 months of walk-forward out-of-fold predictions. This is the probability published on the site. The uniform mean is deliberately simple — it avoids overfitting to the stacking weights' training window.

Three independent component models feed two combination strategies. The uniform ensemble is the published probability; Bayesian stacking uses learned weights. Amber bars flag >5pp divergence from the published number. Full methodology

Probability decomposition (transparency surface)

  • Baseline ensemble — P(Croatia win)69.0%
  • + Lineup contribution0.0pp
  • + Style-matchup contribution−0.8pp
  • Published P(Croatia win)68.2%
Croatia
68.2%
Draw
22.7%
Ghana
9.2%

Decomposition of the published P(Croatia win) into the calibrated- baseline plus contributions from the §2.3 expected-XI lineup delta and the §2.7 style-matchup interaction. The §2.7 roadmap is explicit that style effects are second-order to team strength — single-digit-percentage P(win) shifts on extreme style matchups, near-zero on balanced ones. We surface the decomposition for transparency even when the contributions are small; the baseline carries the prediction. Methodology: /docs/methodology.

Latest news & match context

Team news

No recent headlines for Croatia or Ghana.

Match conditions
Stage:
Group L · Matchday 3
Date:
27 Jun
Availability

Croatia

Croatia come in at close to full strength.

Ghana

Ghana come in at close to full strength.

What it means

Croatia and Ghana both come in at close to full strength, so the forecast rests on baseline team strength rather than late team-news swings.

The model's style-matchup analysis nudges the forecast −0.8pp toward Croatia, versus the baseline team-strength prior.

Availability from the predicted squads and injury feed; forecast adjustments from the model's own decomposition. See /docs/methodology/.

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