WC 2026 · Forecasting Oxford Football Forecasting
🇯🇴 Jordan AFC Elo 1,680 · world 48th
3 / 12 / 85 win · draw · win most likely 0–2
🇦🇷 Argentina CONMEBOL Elo 2,114 · world 2nd
Group
J
Date
Sunday 28 June 2026
Kick-off
02:00 UTC
Venue
Dallas Stadium, Arlington

Fig. V7 Ensemble · Group J

Jordan v Argentina — scoreline probabilities

0 Jordan 0–0 Argentina · 5.20% 5.2 Jordan 0–1 Argentina · 12.29% 12 Jordan 0–2 Argentina · 16.78% (most likely) 17 Jordan 0–3 Argentina · 14.80% 15 Jordan 0–4 Argentina · 9.79% 10 Jordan 0–5 Argentina · 5.18% 5.2 Jordan 0–6 Argentina · 2.28% 2.3 Jordan 0–7 Argentina · 0.86% 0.9 68% 1 Jordan 1–0 Argentina · 1.47% 1.5 Jordan 1–1 Argentina · 5.37% 5.4 Jordan 1–2 Argentina · 6.58% 6.6 Jordan 1–3 Argentina · 5.80% 5.8 Jordan 1–4 Argentina · 3.84% 3.8 Jordan 1–5 Argentina · 2.03% 2.0 Jordan 1–6 Argentina · 0.90% 0.9 Jordan 1–7 Argentina · 0.34% 26% 2 Jordan 2–0 Argentina · 0.37% Jordan 2–1 Argentina · 0.97% 1.0 Jordan 2–2 Argentina · 1.29% 1.3 Jordan 2–3 Argentina · 1.14% 1.1 Jordan 2–4 Argentina · 0.75% 0.8 Jordan 2–5 Argentina · 0.40% Jordan 2–6 Argentina · 0.18% Jordan 2–7 Argentina · 0.07% 5% 3 Jordan 3–0 Argentina · 0.05% Jordan 3–1 Argentina · 0.13% Jordan 3–2 Argentina · 0.17% Jordan 3–3 Argentina · 0.15% Jordan 3–4 Argentina · 0.10% Jordan 3–5 Argentina · 0.05% Jordan 3–6 Argentina · 0.02% Jordan 3–7 Argentina · 0.01% 1% 4 Jordan 4–0 Argentina · 0.01% Jordan 4–1 Argentina · 0.01% Jordan 4–2 Argentina · 0.02% Jordan 4–3 Argentina · 0.01% Jordan 4–4 Argentina · 0.01% Jordan 4–5 Argentina · 0.01% Jordan 4–6 Argentina · 0.00% Jordan 4–7 Argentina · 0.00% 0% 5 Jordan 5–0 Argentina · 0.00% Jordan 5–1 Argentina · 0.00% Jordan 5–2 Argentina · 0.00% Jordan 5–3 Argentina · 0.00% Jordan 5–4 Argentina · 0.00% Jordan 5–5 Argentina · 0.00% Jordan 5–6 Argentina · 0.00% Jordan 5–7 Argentina · 0.00% 0% 6 Jordan 6–0 Argentina · 0.00% Jordan 6–1 Argentina · 0.00% Jordan 6–2 Argentina · 0.00% Jordan 6–3 Argentina · 0.00% Jordan 6–4 Argentina · 0.00% Jordan 6–5 Argentina · 0.00% Jordan 6–6 Argentina · 0.00% Jordan 6–7 Argentina · 0.00% 0% 7 Jordan 7–0 Argentina · 0.00% Jordan 7–1 Argentina · 0.00% Jordan 7–2 Argentina · 0.00% Jordan 7–3 Argentina · 0.00% Jordan 7–4 Argentina · 0.00% Jordan 7–5 Argentina · 0.00% Jordan 7–6 Argentina · 0.00% Jordan 7–7 Argentina · 0.00% 0%

Cells show P(exact scoreline); the right column and bottom row are the marginal totals P(Jordan scores k) and P(Argentina scores k). Grid runs 0–7 goals per side; the 8–10-goal tail holds 0.58% of the mass and is omitted from the cells (not from the totals).

The grid makes Argentina favourites at 84.8%, with a 12.0% draw. The single most-likely scoreline is 0–2 (16.8%), but no exact score clears 17% — the distribution is broad, as it should be.

Source · Oxford Football Forecasting model

Win · draw · loss

🇯🇴 Jordan 3.2% Draw 12% 🇦🇷 Argentina 84.8%

Rounded values sum to exactly 100%.

Expected goals (λ)

🇯🇴Jordan 0.39
🇦🇷Argentina 2.65

Poisson means feeding the grid; combined expected goals 3.04.

58.5% Over 2.5 goals P(3 or more goals in the match)
41.5% Under 2.5 goals complement of over-2.5
30.5% Both teams to score P(each side scores ≥ 1)
0–2 Most-likely scoreline modal exact score · 16.8%
AT&T Arlington, USA
Heat index 45°C apparent temperature (June–July)
Max temperature 35°C June–July daily high
Humidity 62% relative humidity
Altitude 177m above sea level

Source · Open-Meteo & venue records. Travel and time-zone exposure are per-team — see each side's dossier.

1,680 Elo rating 2,114
1.33 Recent NT form 2.47
€16M Squad value €946M
0.075 Squad form (global) 0.330
0.158 Fitness readiness 0.785
−0.12 Decoupling g +0.21

Argentina carry the Elo edge (434 points). On the decoupling axis, Argentina is the side whose squad is valued higher relative to its record.

How a single-match forecast is built

The pairing is scored by the ensemble — Dixon-Coles bivariate-Poisson, the Bayesian hierarchical model and the global LightGBM-Poisson, log-pooled — yielding the 11×11 scoreline grid above. Win/draw/loss, expected goals (λ), over-2.5 and both-teams-to-score are all marginals of that one grid, so they are mutually consistent by construction. The strength inputs shown here feed the models; the forecast is their pooled output, not a manual weighting of these rows. The model matches the market out-of-sample (RPS 0.1891 vs 0.1905); it does not significantly beat it at n = 3. The ensemble, in full →