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Discover recent sales patterns for Mallard Way in the WS11 district in Cannock and how they match the city's rhythm.
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House Prices > Cannock > WS11 > Mallard Way
Quick Look at Property Prices in Mallard Way
Mallard Way Real Estate vs Surrounding Areas
Norton Canes
Homes in Norton Canes are valued 35% beneath their Mallard Way equivalents on average. (£217,700 vs £333,100) As such, opting to buy elsewhere in Norton Canes rather than Mallard Way could cut your spend by about £115,400 for a comparable property.
WS11 9
Property costs on Mallard Way are 26% greater than the WS11 9 sector average. (£333,100 vs £246,300). Therefore, a comparable home elsewhere in the sector may cost £86,800 less than a similar property on Mallard Way, based on current market trends.
i.e. WS11
Fancy a discount? The WS11 district could save you 37% over Mallard Way. (£210,200 vs £333,100). With these averages, a home on Mallard Way could command £122,900 more than a comparable one in the WS11 district.
i.e. Cannock
According to current trends, Mallard Way homes are 30% pricier than those in Cannock. (£333,100 vs £233,000) With this price gap, a home elsewhere in Cannock could be around £99,800 cheaper than one on Mallard Way.
A Closer Look at WS11
Rather than rely on unfiltered stats, we reinterpret housing data through a cleaner, more adaptive lens. Understand the engine behind our numbers