Abstract

House price is closely associated with the development of the national economy and people’s daily life. Understanding the spatial distribution characteristics and influencing factors of the house price is of great practical significance. Although a lot of attention has been paid to modeling the house price from structure and location attributes, limited work has considered the impact of visual attributes. Intuitively, a better visual environment may raise the surrounding house price. When aggregating multiple factors that influence house price, the multiscale geographically weighted regression (MGWR) provides a suitable solution. Specifically, the MGWR assigns each factor a bandwidth to model the spatial heterogeneity, e.g., a factor may have different influences at different places. In this paper, we introduce the visual environment factors into the MGWR method. In detail, we extract ten visual elements, e.g., sky, vegetation, road, from the Baidu street view (BSV) images, using a deep learning framework. We further define six visual environment factors to investigate their influence on house price. Based on the data from two representative Chinese cities, i.e., Beijing and Chongqing, we reveal the influence degree and spatial scale difference of six visual indexes on the house price in two cities. Results show that: (1) the influence intensity of our proposed six visual environment factors on the house price in different regions of the city can be identified, and the green view index (GVI) is the most important visual environmental factor; and (2) the influence of these view indexes changes significantly or even reversely depends on different areas.

Highlights

  • As a hot topic concerning the government, real estate investors, and residents, the house price is strongly associated with economic activities and people’s daily life

  • We controlled for a series of locational and structural variables, adding visual factors to the multiscale geographically weighted regression (MGWR) model

  • Our main contribution lies in that we extract ten visual elements and define six visual indexes to investigate their influences on house prices

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Summary

Introduction

As a hot topic concerning the government, real estate investors, and residents, the house price is strongly associated with economic activities and people’s daily life. There are still few studies that explore the relationship between visual environment elements and house prices. Spatial heterogeneity is another common phenomenon in geographic distribution. Kang et al [17] introduced the GWR to model the spatial relationships between influencing factors and house price appreciation. There is little research on the scale difference of spatial heterogeneity of different house price-influencing factors. Compared with the traditional house price models, such as HPM and GWR, the MGWR can effectively deal with spatial heterogeneity of house price but can identify the exclusive bandwidths for each influencing factor. MGWR is introduced to explore the spatial heterogeneity relationships between six visual indexes and the house price. The results of this study can provide a scientific basis and theoretical guidance for urban facilities planning and community street environment design in different cities

Overview
Data Collection
Street Visual Features
Structural Features and Locational Features
Hedonic Price Model
Multiscale Geographically Weighted Regression
Spatial Distribution of the House Price
Spatial Distribution of Visual Indexes
Comparison of Models
Spatial Scale Analysis
Results of the Global Regression Models
MGWR Regression Coefficient Analysis
Conclusions
Full Text
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