How neighborhood perception affects housing rents: A novel analytical approach
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How neighborhood perception affects housing rents: A novel analytical approach


Housing rents usually correlate with factors such as the building’s age, facilities, and location. Yet not all rentals with similar physical factors charge the same rent. Psychological factors such as the subjective perceptions of the neighborhood matter as well.

Considering these perception variables, an Osaka Metropolitan University team has developed a method with almost 75% accuracy in explaining housing prices in Osaka City.

The team led by Graduate School of Human Life and Ecology student Xiaorui Wang and Professor Daisuke Matsushita used existing Osaka City property datasets and incorporated additional information on the physical factors (sky, vegetation, and buildings) of the streetscape images, and the impressions (safety, beauty, depression, liveliness, wealth, and boredom) of the streetscape using machine learning.

The method predicted rent prices with an accuracy of 73.92%. Among the variables, the neighborhood perceptions ranked highly as an indicator, just behind the building age, floor area, and distance to the central business district.

The findings were published in Habitat International.

Declaration of competing interest
The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Funding
This study was supported by JSPS KAKENHI [Grant Number 24K01053], and JST SPRING [Grant Number JPMJSP2139].

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About OMU
Established in Osaka as one of the largest public universities in Japan, Osaka Metropolitan University is committed to shaping the future of society through “Convergence of Knowledge” and the promotion of world-class research. For more research news, visit https://www.omu.ac.jp/en/ and follow us on social media: X, Facebook, Instagram, LinkedIn.
Journal: Habitat International
Title: Explaining housing rents: A neural network approach to landscape image perceptions
DOI: 10.1016/j.habitatint.2024.103250
Author(s): Xiaorui Wang, Jihui Yuan, Yangcheng Gu, Daisuke Matsushita
Publication date: 30 November 2024
URL: https://doi.org/10.1016/j.habitatint.2024.103250
Fichiers joints
  • Factors in rent prices: A new method predicts rents with high accuracy by adding variables of streetscape components and neighborhood perceptions to an existing hedonic price model. Credit: Osaka Metropolitan University
Regions: Asia, Japan
Keywords: Applied science, Artificial Intelligence, Society, Economics/Management, Social Sciences, Business, Property & construction

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