Qiu, W.; Huang, X.; Li, X.; Li, W.; Zhang, Z. (2020). Investigating the impacts of street environment on pre-owned housing price in Shanghai using street-level images. Editorial Universitat Politècnica de València. 29-39. https://doi.org/10.4995/CARMA2020.2020.11410
Por favor, use este identificador para citar o enlazar este ítem: http://hdl.handle.net/10251/148995
Title:
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Investigating the impacts of street environment on pre-owned housing price in Shanghai using street-level images
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Author:
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Qiu, Waishan
Huang, Xiaokai
Li, Xiaojiang
Li, Wenjing
Zhang, Ziye
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Issued date:
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Abstract:
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[EN] Studies considering street environment quality’s impact on housing value were
limited to top-down variables such as the green ratio measured from satellite
maps. In contrast, this study quantified street views’ ...[+]
[EN] Studies considering street environment quality’s impact on housing value were
limited to top-down variables such as the green ratio measured from satellite
maps. In contrast, this study quantified street views’ impacts on the value of
second-hand commodity residential properties in Shanghai based on analysis
of street view imagery. (1) It applied computer vision to objectively measure
street features from largely accessible street view imagery. (2) Based on the
classical urban design measures frameworks, it applied machine learning to
evaluate human perceived street quality as street scores systematically, in
contrast to the common practice of doing so in a more intuition-based fashion.
(3) It further identified important indicators from both human-centered street
scores as well as the more objective street feature measures with positive or
adverse effects on property values based on a hedonic modeling method. The
estimation suggested both street scores and features are significant and nonnegligible. For the perceived street scores (from 0-10 scale), neighborhoods
with a unit increase in their “enclosure” or “safety” score enjoy price
premium of 0.3% to 0.6%. Meanwhile, streets with 10% greater tree canopy
exposure are attributable to a 0.2% increase in the property value. This study
enriched our current understanding at a micro level of the factors that impact
property values from the perspective of the built environment. It introduced
human-centered perception of street scores and objective measures of street
features as spatial variables into the analysis of neighborhood attribute
vectors.
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Subjects:
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Web data
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Internet data
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Big data
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Qca
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Pls
,
Sem
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Conference
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Machine learning
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Property value
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Shanghai
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Street view imagery.
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Copyrigths:
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Reconocimiento - No comercial - Sin obra derivada (by-nc-nd)
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ISBN:
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9788490488324
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DOI:
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10.4995/CARMA2020.2020.11410
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Publisher:
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Editorial Universitat Politècnica de València
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Publisher version:
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http://ocs.editorial.upv.es/index.php/CARMA/CARMA2020/paper/view/11410
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Conference name:
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CARMA 2020 - 3rd International Conference on Advanced Research Methods and Analytics
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Conference place:
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Valencia, Spain
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Conference date:
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Julio 08-09,2020
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Type:
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Capítulo de libro
Comunicación en congreso
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