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Author SHA1 Message Date
Khalim Conn-Kowlessar
4afab2c3d8 feat(epc-prediction): roof-insulation +/-1-bucket reporting
Adds roof_insulation_thickness_pm1 (mirrors construction_age_band_pm1, issue
#1222): adjacent RdSAP thickness buckets (0/NI,12mm..400mm+) carry near-
identical roof U-values, so an off-by-one bucket is a SAP-neutral hit. 'ND'
(no-data) is off the ordered scale, so only an exact match counts there.
Honest measurement of SAP-relevant roof-insulation quality.

Corpus (150pc/514): exact 49.3% -> +/-1 53.7% (the misses are often multiple
buckets or ND, so the band gain is smaller than age's). Fixture: exact ==
+/-1 (0.4118) — its misses are all >1 bucket; gate floor added at 0.4118.

Also fixes two pre-existing pyright errors in the touched test file
(_epc main_fuel_type/main_heating_control were Optional but the
MainHeatingDetail attributes are non-optional Union[int, str]).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-15 14:04:18 +00:00
Khalim Conn-Kowlessar
ffaedd8d14 feat(epc-prediction): ±1-band age scoring + window_count cosmetic (#1222)
Measurement honesty so we optimise SAP-relevant accuracy, not SAP-neutral
misses (ADR-0030 Component Accuracy):
- Add construction_age_band_pm1: an exact-or-adjacent-band hit. Adjacent
  RdSAP age bands carry near-identical U-values, so an off-by-one is
  ~SAP-neutral. Full corpus: exact 78.5% but ±1-band 91.7% (fixture
  63.9% -> 83.3%) — most age misses are adjacent.
- Drop window_count from the gate's residual ceilings (cosmetic): the
  predicted picture clusters at a mapper-default 4 windows vs actuals 1-21,
  but total_window_area (the SAP-relevant signal) stays tight at ~3.4 m2.

Gate: + construction_age_band_pm1 floor 0.8333; window_count no longer gated.

Closes #1222

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-14 10:01:20 +00:00
Khalim Conn-Kowlessar
275a30a825 feat(epc-prediction): complete component coverage — fabric/glazing/renewables/doors (ADR-0030)
Finish the ADR-0030 Component Accuracy set: roof insulation thickness,
floor insulation, room-in-roof presence, modal glazing type, PV presence,
solar water heating (categoricals) + door count (residual). Presence flags
(room-in-roof, PV, solar) are always-applicable — predicting absence when
present is a real miss.

Template-copied baseline (40-postcode corpus), newly visible:
  floor_insulation         94.0%   solar_water_heating  99.7%
  has_pv                   98.6%   has_room_in_roof     91.9%
  modal_glazing_type       59.0%   <- weak
  roof_insulation_thickness 30.6%  <- weak
  door_count  mean|.| 0.40

compare_prediction now scores 19 categoricals + 5 residuals across every
SAP-load-bearing component group.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-14 09:00:30 +00:00
Khalim Conn-Kowlessar
cd43c52cf9 feat(epc-prediction): score the heating components (ADR-0030 Component Accuracy)
Heating is the dominant SAP lever (ablating it to actual cut the SAP error
~7 -> ~4.5) yet was entirely unscored. Add the heating group to
compare_prediction's categorical_hits: main fuel / category / control (off
the primary MainHeatingDetail), water-heating fuel / code, has-cylinder,
cylinder insulation, secondary heating (off SapHeating).

Template-copied baseline on the 40-postcode corpus (no predictor change
yet — this just makes the signal visible):
  heating_main_fuel        93.4%
  heating_main_category    92.7%
  water_heating_fuel/code  91.7% / 92.4%
  heating_main_control     62.1%   <- weak
  has_hot_water_cylinder   78.5%
  cylinder_insulation_type 35.8% (n=120)   <- weak
  secondary_heating_type   16.8% (n=125)   <- weak

Fuel/category predict well from the template; controls, cylinder, and
secondary heating are poor and now drive the next predictor slices.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-14 08:53:15 +00:00
Khalim Conn-Kowlessar
41b5ce5057 refactor(epc-prediction): name-keyed categorical_hits for Component Accuracy (ADR-0030)
ADR-0030 commits Component Accuracy to ~19 categorical components (5 today
+ 8 heating + glazing/renewables). Flat *_correct dataclass fields don't
scale — each needs manual runner wiring. Collapse them into a single
`categorical_hits: dict[str, Optional[bool]]` keyed by component name, which
also matches the runner's name-keyed aggregation (now generic: it tallies
whatever components the comparison reports). No behaviour change; the
classification rates are identical (wall n 578->575 is the 3 certs whose
actual wall is None, now correctly counted as not-applicable via _classify).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-14 08:50:34 +00:00
Khalim Conn-Kowlessar
ed96df9315 feat(epc-prediction): classify roof/floor/insulation/age categoricals (ADR-0029)
The comparison only scored main wall_construction; everything else the
predictor produces (by template-copy) went unmeasured. Extend
compare_prediction to the rest of the ADR-0029 homogeneous categoricals —
wall insulation type, construction age band, roof construction, floor
construction — and aggregate per-categorical classification rates in the
runner. A categorical hit is "not applicable" (None, excluded from the
denominator) when the actual lodges no value, so absent-roof flats don't
score free wins.

Smoke corpus (29 leave-one-out, all but wall are template-copied today):
  wall_construction      93.1%
  wall_insulation_type   93.1%
  construction_age_band  55.2%   <- loud; candidate for cohort-mode
  roof_construction      72.4%
  floor_construction     46.2%   (n=13)

These numbers drive the next slice (extend cohort-mode coverage).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-14 00:10:56 +00:00
Khalim Conn-Kowlessar
f3ad6343a3 feat(epc-prediction): leave-one-out validation harness (ADR-0029)
Pure compare_prediction (TDD): wall-construction classification hit + signed
residuals on floor area, window count, total window area, building-parts count.
Plus validate_epc_prediction.py (IO plumbing): drops each cert from its postcode
cohort, predicts from the rest on guaranteed inputs only, aggregates the metrics,
and reports SAP three ways (pred-calc vs lodged / vs calc-on-actual / vs the
neighbour-mean baseline). Smoke run: wall 90.9%, floor-area mean|·| 42.6 m2 (a
real signal — template-copied floor area is noisy), SAP pred-calc edges baseline.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-13 23:55:05 +00:00