A modification to geographically weighted regression

被引:64
|
作者
Leong, Yin-Yee [1 ]
Yue, Jack C. [1 ]
机构
[1] Natl Chengchi Univ, Dept Stat, Taipei 11605, Taiwan
关键词
Geographically weighted regression; Modifiable areal unit problem (MAUP); Generalized additive model; Computer simulation; Cross validation; VARYING COEFFICIENT MODELS; TESTS;
D O I
10.1186/s12942-017-0085-9
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Geographically weighted regression (GWR) is a modelling technique designed to deal with spatial non-stationarity, e.g., the mean values vary by locations. It has been widely used as a visualization tool to explore the patterns of spatial data. However, the GWR tends to produce unsmooth surfaces when the mean parameters have considerable variations, partly due to that all parameter estimates are derived from a fixed-range (bandwidth) of observations. In order to deal with the varying bandwidth problem, this paper proposes an alternative approach, namely Conditional geographically weighted regression (CGWR). Methods: The estimation of CGWR is based on an iterative procedure, analogy to the numerical optimization problem. Computer simulation, under realistic settings, is used to compare the performance between the traditional GWR, CGWR, and a local linear modification of GWR. Furthermore, this study also applies the CGWR to two empirical datasets for evaluating the model performance. The first dataset consists of disability status of Taiwan's elderly, along with some social-economic variables and the other is Ohio's crime dataset. Results: Under the positively correlated scenario, we found that the CGWR produces a better fit for the response surface. Both the computer simulation and empirical analysis support the proposed approach since it significantly reduces the bias and variance of data fitting. In addition, the response surface from the CGWR reviews local spatial characteristics according to the corresponded variables. Conclusions: As an explanatory tool for spatial data, producing accurate surface is essential in order to provide a first look at the data. Any distorted outcomes would likely mislead the following analysis. Since the CGWR can generate more accurate surface, it is more appropriate to use it exploring data that contain suspicious variables with varying characteristics.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] A modification to geographically weighted regression
    Yin-Yee Leong
    Jack C. Yue
    International Journal of Health Geographics, 16
  • [2] Geographically Weighted Beta Regression
    da Silva, Alan Ricardo
    Lima, Andreza de Oliveira
    SPATIAL STATISTICS, 2017, 21 : 279 - 303
  • [3] A Review on Geographically Weighted Regression
    Lu B.
    Ge Y.
    Qin K.
    Zheng J.
    1600, Editorial Board of Medical Journal of Wuhan University (45): : 1356 - 1366
  • [4] Mapping the results of geographically weighted regression
    Mennis, Jeremy
    CARTOGRAPHIC JOURNAL, 2006, 43 (02): : 171 - 179
  • [5] Parameter Estimation in Geographically Weighted Regression
    Luo, Juan
    2009 17TH INTERNATIONAL CONFERENCE ON GEOINFORMATICS, VOLS 1 AND 2, 2009, : 1206 - 1211
  • [6] Multiscale geographically weighted quantile regression
    Elkady, Allaa H.
    Abdrabou, Abdelnaser S.
    Elayouty, Amira
    SPATIAL ECONOMIC ANALYSIS, 2025,
  • [7] Adaptively robust geographically weighted regression
    Sugasawa, Shonosuke
    Murakami, Daisuke
    SPATIAL STATISTICS, 2022, 48
  • [8] Multiscale Geographically Weighted Regression (MGWR)
    Fotheringham, A. Stewart
    Yang, Wenbai
    Kang, Wei
    ANNALS OF THE AMERICAN ASSOCIATION OF GEOGRAPHERS, 2017, 107 (06) : 1247 - 1265
  • [9] SGWR: similarity and geographically weighted regression
    Lessani, M. Naser
    Li, Zhenlong
    INTERNATIONAL JOURNAL OF GEOGRAPHICAL INFORMATION SCIENCE, 2024, 38 (07) : 1232 - 1255
  • [10] Generalized geographically and temporally weighted regression
    Yu, Hanchen
    COMPUTERS ENVIRONMENT AND URBAN SYSTEMS, 2025, 117