House Price Valuation Model Based on Geographically Neural Network
Weighted Regression: The Case Study of Shenzhen, China
- URL: http://arxiv.org/abs/2202.04358v1
- Date: Wed, 9 Feb 2022 09:40:54 GMT
- Title: House Price Valuation Model Based on Geographically Neural Network
Weighted Regression: The Case Study of Shenzhen, China
- Authors: Zimo Wang, Yicheng Wang, Sensen Wu
- Abstract summary: A novel technique, Geographical Neural Network Weighted Regression (GNNWR), has been applied to improve the accuracy of real estate appraisal.
GNNWR captures the weight distribution of different variants at Shenzhen real estate market, which GWR is difficult to materialize.
It's a practical and trenchant way to assess house price, and we demonstrate the effectiveness of GNNWR on a complex socioeconomic dataset.
- Score: 6.023710971800604
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Confronted with the spatial heterogeneity of real estate market, some
traditional research utilized Geographically Weighted Regression (GWR) to
estimate the house price. However, its kernel function is non-linear, elusive,
and complex to opt bandwidth, the predictive power could also be improved.
Consequently, a novel technique, Geographical Neural Network Weighted
Regression (GNNWR), has been applied to improve the accuracy of real estate
appraisal with the help of neural networks. Based on Shenzhen house price
dataset, this work conspicuously captures the weight distribution of different
variants at Shenzhen real estate market, which GWR is difficult to materialize.
Moreover, we focus on the performance of GNNWR, verify its robustness and
superiority, refine the experiment process with 10-fold cross-validation,
extend its application area from natural to socioeconomic geospatial data. It's
a practical and trenchant way to assess house price, and we demonstrate the
effectiveness of GNNWR on a complex socioeconomic dataset.
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