References
- Assunção, R.M., 2003. Space varying coefficient models for small area data. Environmetrics, 14 (5), 453–473.
- Brunsdon, C., Fotheringham, A.S., and Charlton, M.E., 2010. Geographically weighted regression: a method for exploring spatial nonstationarity. Geographical Analysis, 28 (4), 281–298.
- Brunsdon, C., Fotheringham, S., and Charlton, M., 1998. Geographically weighted regression. Journal of the Royal Statistical Society, 47 (3), 431–443.
- Byrd, R.H., Hribar, M.E., and Nocedal, J., 1999. An interior point algorithm for large-scale nonlinear programming. SIAM Journal on Optimization, 9 (4), 877–900.
- Conn, A.R., Gould, N.I., and Toint, P.L., 2000. Trust region methods. Philadelphia, PA: SIAM.
- Cupido, K., Fotheringham, A.S., and Jevtic, P., 2021. Local modelling of us mortality rates: A multiscale geographically weighted regression approach. Population, Space and Place, 27 (1), e2379.
- De Ridder, D., et al., 2022. Evolution of the spatial distribution of alcohol consumption following alcohol control policies: a 25-year cross-sectional study in a swiss urban population. medRxiv.
- Forati, A.M., Ghose, R., and Mantsch, J.R., 2021. Examining opioid overdose deaths across communities defined by racial composition: a multiscale geographically weighted regression approach. Journal of Urban Health, 98 (4), 551–562.
- Fotheringham, A.S., Brunsdon, C., and Charlton, M., 2003. Geographically weighted regression: the analysis of spatially varying relationships. Chichester, UK: John Wiley & Sons.
- Fotheringham, A.S., Yang, W., and Kang, W., 2017. Multiscale geographically weighted regression (MGWR). Annals of the American Association of Geographers, 107 (6), 1247–1265.
- Gelfand, A.E., et al., 2003. Spatial modeling with spatially varying coefficient processes. Journal of the American Statistical Association, 98 (462), 387–396.
- Gustavson, S., 2005. Simplex noise demystified. Linköping, Sweden: Linköping University.
- Harrison, D. Jr. and Rubinfeld, D.L., 1978. Hedonic housing prices and the demand for clean air. Journal of Environmental Economics and Management, 5 (1), 81–102.
- Hastie, T., and Tibshirani, R., 1990. Exploring the nature of covariate effects in the proportional hazards model. Biometrics, 46 (4), 1005–1016.
- Iyanda, A.E., et al., 2020. A retrospective cross-national examination of covid-19 outbreak in 175 countries: a multiscale geographically weighted regression analysis (January 11-June 28, 2020). Journal of Infection and Public Health, 13 (10), 1438–1445.
- Li, Z., and Fotheringham, A.S., 2020. Computational improvements to multi-scale geographically weighted regression. International Journal of Geographical Information Science, 34 (7), 1378–1397.
- Li, Z., et al., 2019. Fast geographically weighted regression (fastgwr): a scalable algorithm to investigate spatial process heterogeneity in millions of observations. International Journal of Geographical Information Science, 33 (1), 155–175.
- Maiti, A., et al., 2021. Exploring spatiotemporal effects of the driving factors on covid-19 incidences in the contiguous united states. Sustainable Cities and Society, 68, 102784.
- Mollalo, A., Vahedi, B., and Rivera, K.M., 2020. Gis-based spatial modeling of covid-19 incidence rate in the continental united states. The Science of the Total Environment, 728, 138884.
- Murakami, D., and Griffith, D.A., 2015. Random effects specifications in eigenvector spatial filtering: a simulation study. Journal of Geographical Systems, 17 (4), 311–331.
- Murakami, D., et al., 2021. Scalable gwr: a linear-time algorithm for large-scale geographically weighted regression with polynomial kernels. Annals of the American Association of Geographers, 111 (2), 459–480.
- Niu, L., et al., 2021. Identifying surface urban heat island drivers and their spatial heterogeneity in China’s 281 cities: an empirical study based on multiscale geographically weighted regression. Remote Sensing, 13 (21), 4428.
- Nocedal, J., and Wright, S., 2006. Numerical optimization. Berlin: Springer Science & Business Media.
- Oshan, T.M., et al., 2019. MGWR: a python implementation of multiscale geographically weighted regression for investigating process spatial heterogeneity and scale. ISPRS International Journal of Geo-Information, 8 (6), 269.
- Oshan, T.M., Smith, J.P., and Fotheringham, A.S., 2020. Targeting the spatial context of obesity determinants via multiscale geographically weighted regression. International Journal of Health Geographics, 19 (1), 11.
- Sauer, T., 2018. Numerical analysis. 3rd ed. New York, NY: Pearson Education.
- Shahneh, M.R., Oymak, S., and Magdy, A., 2021. A-gwr: Fast and accurate geospatial inference via augmented geographically weighted regression, in Proceedings of the 29th International Conference on Advances in Geographic Information Systems, pp. 564–575.
- Shen, T., et al., 2020. On hedonic price of second-hand houses in Beijing based on multi-scale geographically weighted regression: scale law of spatial heterogeneity. Economic Geography, 40, 75–83.
- Tran, D.X., et al., 2022. Quantifying spatial non-stationarity in the relationship between landscape structure and the provision of ecosystem services: An example in the New Zealand hill country. The Science of the Total Environment, 808, 152126.
- Wu, B., Yan, J., and Lin, H., 2022. A cost-effective algorithm for calibrating multiscale geographically weighted regression models. International Journal of Geographical Information Science, 36 (5), 898–917.
- Yu, H., et al., 2020. Inference in multiscale geographically weighted regression. Geographical Analysis, 52 (1), 87–106.