Where Our Data Comes From
Street-level accuracy doesn’t happen by accident. It’s the result of thoughtful data handling and smart recalibration. See why our figures hold up
Find a full snapshot of property data for Malpass Gardens in the WV8 district in Wolverhampton, and how it matches against Wolverhampton overall.
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House Prices > Wolverhampton > WV8 > Malpass Gardens
The Pricing Breakdown for Malpass Gardens
Property Trends: Malpass Gardens vs Surrounding Areas
Codsall
On average, buyers in Codsall pay 20% less than buyers on Malpass Gardens. (£288,100 vs £358,600) Based on this, buyers looking at Codsall could tuck away £70,500 for something else.
WV8 1
Why spend more? Homes in WV8 1 are 22% cheaper than on Malpass Gardens. (£279,500 vs £358,600) Given this gap, a similar property in the sector outside Malpass Gardens could cost £79,100 less than one on Malpass Gardens.
i.e. WV8
Compared to the WV8 district, Malpass Gardens properties are 16% pricier on average. (£358,600 vs £301,000). If weighing options carefully, choosing Malpass Gardens could mean an additional outlay of £57,600 over similar district properties.
i.e. Wolverhampton
Property buyers on Malpass Gardens face 16% higher costs than those in Wolverhampton. (£358,600 vs £302,000) As it stands, a like-for-like property on Malpass Gardens may be tagged at £56,500 more than its Wolverhampton counterparts.
A Closer Look at WV8
Street-level accuracy doesn’t happen by accident. It’s the result of thoughtful data handling and smart recalibration. See why our figures hold up
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