ZIP 13696 Property Distress & Foreclosure Data
St. Lawrence County, New York's ZIP 13696 registers 31/100 composite distress, which DLRadar reads as moderate. The most distinctive pressure shows up in structural risk (70/100), institutional ownership (65/100), construction/permit lag (49/100). On the structural side it scores 70/100, with 0/100 of stress already active. Climate and flood risk are elevated too — flood (NFIP) exposure (90/100), FEMA disaster exposure (83/100), climate & FEMA risk (76/100).
Prices here sit in a expansion phase: values rose 6.3% over the trailing year (phase confidence 39/100). Even climbing markets leave specific parcels in distress; the scoring isolates them.
On demographic stress specifically, 13696 scores 23/100. Roughly 0.0% live below the poverty line, a low share typical of higher-equity areas. The vacancy rate is 0.0%. The ZIP holds roughly 79 housing units. Around 0% of renters are cost-burdened. Households earn a median $55,401 — below the roughly $78,000 national figure. About 0% have a four-year degree. The tenure split is 40% owner-occupied to 60% rented. 188 residents call 13696 home, typically aged 33.
Overall, 13696 shows a mixed profile — neither uniformly stressed nor insulated — so opportunity is property-specific. Every signal above traces to a verifiable public dataset, refreshed continuously and scored the same way in every ZIP nationwide.
Distress signal breakdown — ZIP 13696
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 St. Lawrence County
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Deterministic. Every signal traces to a public dataset · methodology