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Forecast Accuracy Review

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Forecast Accuracy Review

A forecast is only worth what it adds over the free alternative: shipping last period's number. Every review must answer "how many points does this process add over naive?" before any model discussion.

Required data

Per-SKU demand history at the planning bucket (usually monthly): sku, period, qty. If evaluating an existing forecast, also the forecast values with their creation dates (to avoid hindsight leakage). 18+ periods per SKU for a meaningful backtest; flag SKUs with less.

Workflow

  1. Profile the demand first. Per SKU compute mean, CV and zero-period share; classify smooth / erratic / intermittent / lumpy (defaults: CV 0.5 and 1.0 boundaries, intermittency at >25% zero periods - state them, adjust to natural breaks). Accuracy expectations differ by class; never report one blended number alone.
  2. Set the benchmarks. Naive (last period) always; seasonal naive when 2+ full seasons exist. These are non-negotiable controls.
  3. Backtest rolling-origin. One-step-ahead forecasts for each of the last 6+ periods, expanding window, using only data before each origin. A single train/test split is one lucky draw - do not accept it.
  4. Score with honest metrics:
    • WMAPE = sum(|error|) / sum(actual) - the volume-weighted headline
    • Bias = sum(error) / sum(actual) - direction; a fine WMAPE with persistent bias is quietly building excess stock or stockouts
    • MAPE only as a footnote, and always disclose how many zero-actual periods it dropped
  5. Deliver the FVA verdict. FVA = WMAPE(naive) - WMAPE(candidate), per segment and overall. Negative FVA means the process destroys value - say it plainly.
  6. Validate. Recompute WMAPE for one model directly from the raw backtest rows and confirm it matches the table before presenting.

Pitfalls to check explicitly

  • MAPE with zeros: undefined on zero-actual periods; silently dropping them fakes precision on intermittent SKUs.
  • MAPE asymmetry rewards under-forecasting (errors capped at 100% below, unbounded above).
  • Aggregation mix: a good total can hide terrible A-item accuracy; always show the value-weighted cut.
  • Lumpy segments: if WMAPE > ~100%, the honest recommendation is an inventory-policy answer (buffers, MTO), not a better model.
  • Hindsight leakage: forecasts must predate actuals; check timestamps when auditing an existing process.

Output format

  1. Scoreboard table: model x (WMAPE, bias, MAPE-footnote), sorted by WMAPE
  2. FVA statement: "the process adds/destroys X points vs naive" - overall and per segment
  3. Segment table (pattern x best approach)
  4. Two or three recommendation sentences tied to segments, not globals

Worked example with five baseline models and charts: https://github.com/gulmezeren2-byte/forecast-accuracy-lab


Source: industrial-engineering-ai-skills by Eren Gulmez (MIT). The full method pack - entry skill, role agents, data-hygiene rules and artifact templates - lives there.

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