Spatial and Attribute Neural Network Weighted Regression for the Accurate Estimation of Spatial Non-Stationarity
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Published:2022-12-13
Issue:12
Volume:11
Page:620
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ISSN:2220-9964
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Container-title:ISPRS International Journal of Geo-Information
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language:en
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Short-container-title:IJGI
Author:
Ni Sihan,Wang Zhongyi,Wang Yuanyuan,Wang Minghao,Li Shuqi,Wang Nan
Abstract
Geographically neural network weighted regression is an improved model of GWR combined with a neural network. It has a stronger ability to fit nonlinear functions, and complex geographical processes can be modeled more fully. GNNWR uses the distance metric of Euclidean space to express the relationship between sample points. However, except for spatial location features, geographic entities also have many diverse attribute features. Incorporating attribute features into the modeling process can make the model more suitable for the real geographical process. Therefore, we proposed a spatial-attribute proximities deep neural network to aggregate data from the spatial feature and attribute feature, so that one unified distance metric can be used to express the spatial and attribute relationships between sample points at the same time. Based on GNNWR, we designed a spatial and attribute neural network weighted regression (SANNWR) model to adapt to this new unified distance metric. We developed one case study to examine the effectiveness of SANNWR. We used PM2.5 concentration data in China as the research object and compared the prediction accuracy between GWR, GNNWR and SANNWR. The results showed that the “spatial-attribute” unified distance metric is useful, and that the SANNWR model showed the best performance.
Funder
National Natural Science Foundation of China
Provincial Key Research and De-velopment Program of Zhejiang
Key project of Soft Science Research of Zhejiang Province in the year 2022
Subject
Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Geography, Planning and Development
Cited by
1 articles.
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