# Forecasting bootstrap reference This subdir holds the **bootstrap reference** for the Track-3 (forecasting) leaderboard recompute — the long-format per-draw frame that the skill / rank / fairness CIs reduce from. ## Layout ``` forecasting/bootstrap/ ├── draws.parquet # per-(reduction, model, scope, metric, draw) value └── draws.meta.json # provenance: seed, n_boot, methods, baseline, git commit ``` ## What's it for Each row of `draws.parquet` is one bootstrap draw of one headline scope for one method, for one of three reductions (`reduction` column): - **skill** — paired skill score `S = 1 − exp(mean_task log R)` vs `seasonal_naive`, per `(model, scope)` (scope = `channel__score`, `sleep_score`, `workout_score`, `activity_score`, `physiology_score`, `overall_score`). - **rank** — cross-method average rank, per `(model, scope, metric)`. - **fairness** — mean-absolute-pairwise-difference (MAPD) disparity-ratio fair skill score, per `(model, scope)` (scope = `age_group`, `sex`, `overall`, the 4 sensor categories, and per-channel rows). Reducing each draw group to mean / SE / percentile-CI (and BCa for the headline scopes) reproduces the published `forecasting_*_bootstrap.csv` tables. > **Note — scope-level, not task-level.** Unlike the imputation track (whose > `draws.parquet` is per-task `E`/`R`/`rank`, reducible to any scope), forecasting > aggregates tasks → scopes *within* each draw, so its draws are already at the > headline-scope level. They reproduce the headline CIs but cannot be re-aggregated > to other scopes. (Re-aggregation is unnecessary for the leaderboard, which shows > exactly these scopes.) ## Provenance Generated by `scripts/paper_results/forecasting/produce_forecasting_bootstrap_draws.py` in the code repo. The current snapshot was built with: - `seed = 42`, `n_boot = 1000`, `ci_level = 0.95` - `split = test` (canonical `sharable_users_seed42_2026`) - 10 methods (see `draws.meta.json:methods`) - Baseline: `seasonal_naive`; scored metrics: `mae` (continuous), `auroc` (binary) - Within-user aggregation: micro; `age_bins = [18, 30, 40, 50, 60]` - Fairness disparity: MAPD (mean absolute pairwise difference) See `draws.meta.json` for the exact git commit and runtime metadata. ## Note: no pooled `per_user_errors.parquet` The per-user substrate (the BCa LOO + point input) is **not** stored here — it is exactly the concatenation of the per-method substrate files one level up: ```python import glob, pandas as pd pooled = pd.concat( [pd.read_parquet(p) for p in glob.glob("forecasting/*.parquet")], ignore_index=True, ) ``` ## Loading ```python from huggingface_hub import hf_hub_download import pandas as pd, json draws = pd.read_parquet(hf_hub_download( "MyHeartCounts/OpenMHC-leaderboard-data", "forecasting/bootstrap/draws.parquet", repo_type="dataset")) meta = json.loads(open(hf_hub_download( "MyHeartCounts/OpenMHC-leaderboard-data", "forecasting/bootstrap/draws.meta.json", repo_type="dataset")).read()) print(meta["seed"], meta["n_boot"], len(meta["methods"])) ``` See [`SCHEMA.md`](SCHEMA.md) for the full column spec. ## Uploaded with `tools/upload_leaderboard_bootstrap.py --track forecasting` in the [code repo](https://github.com/AshleyLab/myheartcounts-dataset).