ZIP 99769 Property Distress & Foreclosure Data
DLRadar grades ZIP 99769 (Nome County, Alaska) at a low 20/100 for overall property distress. Structural risk reads 44/100 against active distress of 6/100. It additionally carries heavy environmental risk: FEMA disaster exposure (73/100). Property-level stress concentrates in construction/permit lag (83/100), structural risk (44/100), institutional ownership (39/100). By contrast, institutional ownership (39/100) and mortgage stress (20/100) register low.
The market reads peak — home values rose 4.2% year on year, at 34/100 phase confidence. Topping markets hide individual distress behind strong averages.
Vacancy runs 16.0%, above the national norm and a classic distress-and-opportunity signal. The poverty rate is 32.0% — high, a tax-stress and distress correlate. The typical home is worth about $100,000 (2.0× income, relatively affordable). About 766 people live here, median age 25. At $51,875, median income runs below typical U.S. levels. Around 3% of adults hold a bachelor's degree or higher. There are about 171 housing units across 99769. The demographic-stress sub-score lands at 33/100. 96% of housing is owner-occupied.
Net-net, 99769 is a working-distress ZIP — the kind that rewards current, parcel-level intelligence. Every signal above traces to a verifiable public dataset, refreshed continuously and scored the same way in every ZIP nationwide.
Distress signal breakdown — ZIP 99769
Tax delinquency, institutional ownership, insurance pressure, NFIP/flood, construction lag, price dislocation and auction velocity — plus the 0 individual distressed properties (owner, address, APN, per-property score and exit read) are in the full DLRadar report.
Nearby ZIPs in Nome County
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Deterministic. Every signal traces to a public dataset · methodology