gendesign/data/sql/160_refresh_ekb_districts_median_dedup.sql
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fix(sql): dedup deals-to-district assignment in ekb districts median refresh (#1352)
Replace ST_Intersects(district.geom, quarter.geom) with ST_Within(ST_Centroid(quarter.geom), district.geom)
so each cadastral quarter is assigned to exactly one district. Eliminates 85 double-counted quarter-district
pairs and 307 spurious deal-district rows that were skewing PERCENTILE_CONT medians. Function signature
unchanged; no backend code changes required.
2026-06-17 20:29:34 +03:00

91 lines
4.6 KiB
PL/PgSQL

-- Fix: dedup deals-to-district assignment in ekb_districts median refresh.
--
-- Context: 67_refresh_ekb_districts_median.sql introduced ST_Intersects(district.geom, quarter.geom)
-- to join cadastral quarters to districts. A quarter whose polygon straddles a district boundary
-- matched BOTH districts, causing its deals to be counted in multiple districts and skewing
-- the PERCENTILE_CONT / AVG aggregates.
--
-- Fix approach: replace ST_Intersects with ST_Within(ST_Centroid(cq.geom), d.geom).
-- The centroid of each cadastral quarter falls in exactly one district polygon, guaranteeing
-- a 1:1 quarter→district assignment. A DISTINCT ON fallback (ordered by d.district_name) is
-- added in case district polygons overlap at all (they should not, but defensive).
--
-- Measured impact (prod, 2026-06-17, 24-month window):
-- ST_Intersects → 2945 deal-rows (2482 quarter-district pairs, 85 duplicate quarter pairs)
-- ST_Within(centroid) → 2638 deal-rows (2396 quarter-district pairs, 0 duplicates)
-- Eliminated: 307 spurious deal-district assignments.
--
-- Dependencies: ekb_districts_geom (geom), cad_quarters_geom (geom, cad_number),
-- rosreestr_deals (quarter_cad_number, region_code, doc_type,
-- realestate_type_code, area, price_per_sqm, period_start_date),
-- ekb_districts (district_name, median_price_per_m2, mean_price_per_m2).
--
-- 67_refresh_ekb_districts_median.sql ran on prod; this file supersedes it via _schema_migrations.
-- No dependent views or FK constraints on the function itself.
-- Signature unchanged — all existing callers (analytics_refresh.py, beat_schedule.py, etc.)
-- continue to work without modification.
--
-- Deploy order: this file only (no backend code change required).
-- Idempotent: CREATE OR REPLACE FUNCTION — safe to re-run.
BEGIN;
CREATE OR REPLACE FUNCTION refresh_ekb_districts_median(window_months int DEFAULT 24, min_deals int DEFAULT 50)
RETURNS TABLE(district_name text, deals_used bigint, median_pm numeric, mean_pm numeric)
LANGUAGE plpgsql AS $$
BEGIN
RETURN QUERY
WITH
-- Assign each cadastral quarter to exactly ONE district via centroid containment.
-- ST_Within(centroid, district_geom) is 1:1 whereas ST_Intersects matched border-
-- straddling quarters to multiple districts, inflating counts and skewing medians.
-- DISTINCT ON (cq.cad_number) with deterministic ORDER BY guards against the edge
-- case of overlapping district polygons.
quarter_district AS (
SELECT DISTINCT ON (cq.cad_number)
cq.cad_number,
d.district_name
FROM cad_quarters_geom cq
JOIN ekb_districts_geom d
ON ST_Within(ST_Centroid(cq.geom), d.geom)
WHERE d.district_name <> 'не определён'
ORDER BY cq.cad_number, d.district_name
),
per_district AS (
SELECT qd.district_name,
COUNT(*)::bigint AS deals,
PERCENTILE_CONT(0.5) WITHIN GROUP (ORDER BY rd.price_per_sqm)::numeric AS p_median,
AVG(rd.price_per_sqm)::numeric AS p_mean
FROM rosreestr_deals rd
JOIN quarter_district qd ON qd.cad_number = rd.quarter_cad_number
WHERE rd.region_code = 66
AND rd.doc_type = 'ДДУ'
AND rd.realestate_type_code = '002001003000'
AND rd.area BETWEEN 15 AND 200
AND rd.price_per_sqm BETWEEN 30000 AND 1000000
AND rd.period_start_date >= NOW() - (window_months || ' months')::interval
GROUP BY qd.district_name
),
upd AS (
UPDATE ekb_districts e
SET median_price_per_m2 = ROUND(pd.p_median, 0),
mean_price_per_m2 = ROUND(pd.p_mean, 0)
FROM per_district pd
WHERE e.district_name = pd.district_name
AND e.district_name <> 'не определён'
AND pd.deals >= min_deals
RETURNING e.district_name, pd.deals, pd.p_median, pd.p_mean
)
SELECT u.district_name::text, u.deals, ROUND(u.p_median, 0), ROUND(u.p_mean, 0)
FROM upd u
ORDER BY u.district_name;
END;
$$;
COMMENT ON FUNCTION refresh_ekb_districts_median(int, int) IS
'Refresh ekb_districts.median_price_per_m2 + mean_price_per_m2 из ДДУ-сделок rosreestr_deals. '
'Spatial join: ST_Within(ST_Centroid(cad_quarter), district) — каждый квартал ровно в одном районе '
'(fixes ST_Intersects double-count на граничных кварталах; issue #1352). '
'Окно по умолчанию 24 мес, минимум 50 сделок на район. Запускается Celery beat раз в месяц.';
COMMIT;