RuEn

Journal section "Regional economics"

Mortgage Availability vs. Availability of Housing. We Wanted the Best, but It Turned Out...?

Basova E.A.

Volume 14, Issue 4, 2021

Basova E.A. Mortgage availability vs. availability of housing. We wanted the best, but it turned out...? Economic and Social Changes: Facts, Trends, Forecast, 2021, vol. 14, no. 4, pp. 113–130. DOI: 10.15838/esc.2021.4.76.7

DOI: 10.15838/esc.2021.4.76.7

Abstract   |   Authors   |   References
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