Aggregated calibration track record across every claim_type in the forecast ledger. Raw forecast Brier vs calibrated-output Brier, per-claim-type cohort breakdown, 10×10 probability-bucket grid, and the miss list (most-recent wrong calls). Sample sizes are disclosed everywhere; insufficient cohorts (N < 30) are flagged as preliminary and never publish a synthetic Brier number.
Raw forecast Brier is the model output before calibration patches. Calibrated Brier is the post-calibration-applier output (when CalibrationApplier is wired). Honest split — we never collapse these into a single headline number.
One row per claim_type in the ledger. N resolved = denominator (sample_size). Insufficient cohorts (N<30) display "calibrating" instead of a Brier number — synthetic-Brier suppression is permanent until N crosses the threshold.
| claim_type | N resolved | N pending | empirical hit rate | Brier | status | last update |
|---|---|---|---|---|---|---|
For each (claim_type, 10-pt probability bucket) cell: empirical hit rate, sample size N, status. Cells with N<30 show "N/30" progress and suppress synthetic Brier values. Color: green = sufficient, amber = preliminary, grey = no_resolved.
Top 10 most-recently-resolved claims where the model was wrong (realized_outcome ≠ predicted_outcome). This is the missed_prediction drilldown — click a row for full claim provenance, inputs, and methodology hash.
Each horizon scored independently — never aggregated. Q10 Option J floor ratchets with N_eff: 0.22 → 0.20 → 0.18 → 0.16 → 0.14 at N_eff = 30 / 100 / 300 / 1000 / 3000. Cells with N_eff < 30 show "calibrating" instead of a number. Cohort: trading_quant (Q6 lock).