2022
DOI: 10.3390/su141811720
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Housing and Setting Constraints: The Portuguese Evidence

Abstract: In the last few decades, Portugal has witnessed an extraordinary quantitative and qualitative transformation in housing provision. The pace of housing construction was so extensive that the contemporary real estate market is currently characterized by an excessive supply, vis-à-vis the resident population. In this study, we discuss the impact of the financial process on the housing sector in comparison with tenancy. We consider transaction prices of the housing assignments, either through acquisition or throug… Show more

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Cited by 1 publication
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“…This process allowed for the simultaneous quantification of categorical variables while controlling the data's dimensionality. By reducing the dimensions, the analysis becomes more straightforward and the variables can be interpreted as some uncorrelated components rather than the numerous, loosely related variables found in the original dataset [30]. A standard principal component analysis typically assumes linear relationships between numerical variables.…”
Section: Principal Component Analysismentioning
confidence: 99%
“…This process allowed for the simultaneous quantification of categorical variables while controlling the data's dimensionality. By reducing the dimensions, the analysis becomes more straightforward and the variables can be interpreted as some uncorrelated components rather than the numerous, loosely related variables found in the original dataset [30]. A standard principal component analysis typically assumes linear relationships between numerical variables.…”
Section: Principal Component Analysismentioning
confidence: 99%