Estimating fundamental and affordable housing price trends: a study based on Singapore
Tilak Abeysinghe and
Jiaying Gu
Applied Economics, 2016, vol. 48, issue 49, 4783-4798
Abstract:
Policy-makers often impose some cooling measures on the housing market when housing prices rise fast. Such policies yield limited success if housing prices are driven up by fundamentals. Estimating a fundamental price trend from observed price data is a challenge. We present an empirical methodology to separate housing price trends into fundamental and affordable components. Deviating from the common practice, we replace current income by a long-run income measure constructed from household incomes at different quantiles. This income measure provides a more suitable basis for constructing affordable house price levels. It also serves as a better fundamental variable, especially for segmented housing markets like that of Singapore. These price trends provide policy-makers with useful information to intervene into property markets to achieve desirable outcomes. Analysing Singapore data using this methodology shows the magnitudes of the price gaps between actual and fundamental prices and how housing affordability fluctuates over price cycles.
Date: 2016
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Persistent link: https://EconPapers.repec.org/RePEc:taf:applec:v:48:y:2016:i:49:p:4783-4798
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DOI: 10.1080/00036846.2016.1164825
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