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Instead of vague approximations, we deliver finely tuned pricing that’s shaped by real-world property data. Every line is filtered with unusual care. Learn what happens behind the figures
This page contains important details about Church Lane in Nuneaton and compares it to the rest of the area and Nuneaton overall.
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House Prices > Nuneaton > CV10 > Church Lane
Understanding Recent Transactions in Church Lane
Church Lane Homes vs Surrounding Areas Prices
Cadeby
Cadeby homes outprice Church Lane properties by 62% typically. (£466,200 vs £287,000) This points to a purchase on Church Lane rather than Cadeby potentially trimming your costs by £179,200.
CV10 0
House prices on Church Lane exceed the CV10 0 sector by 18% based on typical values. (£287,000 vs £235,900). On that basis, choosing Church Lane over a nearby alternative could lead to an extra spend of around £51,100.
i.e. CV10
On average, a home in the CV10 district costs 26% less than one on Church Lane. (£211,700 vs £287,000). Putting it in figures, properties on Church Lane require about £75,300 more investment than those in CV10.
i.e. Nuneaton
Residential properties in Nuneaton are typically listed at prices 6% below those on Church Lane. (£270,000 vs £287,000). In real terms, Church Lane might mean trimming £16,800 from your future savings.
Discover the CV10 Area
Instead of vague approximations, we deliver finely tuned pricing that’s shaped by real-world property data. Every line is filtered with unusual care. Learn what happens behind the figures