Spatial Autoregressive Models for Geographically Hierarchical Data Structures
Abstract
This article discusses how standard spatial autoregressive models and their estimation can be extended to accommodate geographically hierarchical data structures. Whereas standard spatial econometric models normally operate at a single geographical scale, many geographical data sets are hierarchical in nature—for example, information about houses nested into data about the census tracts in which those houses are found. Here we outline four model specifications by combining different formulations of the spatial weight matrix W and of ways of modeling regional effects. These are (1) groupwise W and fixed regional effects; (2) groupwise W and random regional effects; (3) proximity‐based W and fixed regional effects; and (4) proximity‐based W and random regional effects. We discuss each of these model specifications and their associated estimation methods, giving particular attention to the fourth. We describe this as a hierarchical spatial autoregressive model. We view it as having the most potential to extend spatial econometrics to accommodate geographically hierarchical data structures and as offering the greatest coming together of spatial econometric and multilevel modeling approaches. Subsequently, we provide Bayesian Markov Chain Monte Carlo algorithms for implementing the model. We demonstrate its application using a two‐level land price data set where land parcels nest into districts in Beijing, China, finding significant spatial dependence at both the land parcel level and the district level.
Citing Literature
Number of times cited according to CrossRef: 36
- Haimeng Liu, Chuanglin Fang, Kai Fang, Coupled Human and Natural Cube: A novel framework for analyzing the multiple interactions between humans and nature, Journal of Geographical Sciences, 10.1007/s11442-020-1732-9, 30, 3, (355-377), (2020).
- Wenjie Wu, Guanpeng Dong, Yeran SUN, Yanwen Yun, Contextualized effects of Park access and usage on residential satisfaction: A spatial approach, Land Use Policy, 10.1016/j.landusepol.2020.104532, 94, (104532), (2020).
- Wei Tu, Hoehun Ha, Weifeng Wang, Liang Liu, Investigating the association between household firearm ownership and suicide rates in the United States using spatial regression models, Applied Geography, 10.1016/j.apgeog.2020.102297, 124, (102297), (2020).
- João L. Rodrigues, Hugo M. Bolognesi, Joel D. Melo, Fabian Heymann, F.J. Soares, Spatial temporal model for estimating electric vehicles adopters, Energy, 10.1016/j.energy.2019.06.117, (2019).
- Ruth Weir, Using geographically weighted regression to explore neighborhood‐level predictors of domestic abuse in the UK, Transactions in GIS, 10.1111/tgis.12570, 23, 6, (1232-1250), (2019).
- Whitney E. Zahnd, Sara L. McLafferty, Jan M. Eberth, Multilevel analysis in rural cancer control: A conceptual framework and methodological implications, Preventive Medicine, 10.1016/j.ypmed.2019.105835, (105835), (2019).
- undefined Zhai, undefined Gao, undefined Zhang, undefined Wu, Perceived Sustainable Urbanization Based on Geographically Hierarchical Data Structures in Nanjing, China, Sustainability, 10.3390/su11082289, 11, 8, (2289), (2019).
- Phillip L. Marotta, Tim Hunt, Louisa Gilbert, Elwin Wu, Dawn Goddard-Eckrich, Nabila El-Bassel, Assessing Spatial Relationships between Prescription Drugs, Race, and Overdose in New York State from 2013 to 2015, Journal of Psychoactive Drugs, 10.1080/02791072.2019.1599472, (1-11), (2019).
- Nana Yang, Jiansong Li, Binbin Lu, Minghai Luo, Linze Li, Exploring the Spatial Pattern and Influencing Factors of Land Carrying Capacity in Wuhan, Sustainability, 10.3390/su11102786, 11, 10, (2786), (2019).
- undefined Cellmer, undefined Kobylińska, undefined Bełej, Application of Hierarchical Spatial Autoregressive Models to Develop Land Value Maps in Urbanized Areas, ISPRS International Journal of Geo-Information, 10.3390/ijgi8040195, 8, 4, (195), (2019).
- Kevin T. Smiley, A Polluting Creed: Religion and Environmental Inequality in the United States, Sociological Perspectives, 10.1177/0731121419862229, (073112141986222), (2019).
- Filippo Temporin, A multilevel structural equation modelling approach to study segregation of deprivation: an application to Bolivia, Quality & Quantity, 10.1007/s11135-018-00832-y, (2019).
- Matthew Quick, Multiscale spatiotemporal patterns of crime: a Bayesian cross-classified multilevel modelling approach, Journal of Geographical Systems, 10.1007/s10109-019-00305-2, (2019).
- Sam Comber, Daniel Arribas-Bel, Alex Singleton, Guanpeng Dong, Les Dolega, Building Hierarchies of Retail Centers Using Bayesian Multilevel Models, Annals of the American Association of Geographers, 10.1080/24694452.2019.1667219, (1-24), (2019).
- Guanpeng Dong, Jing Ma, Duncan Lee, Mingxing Chen, Gwilym Pryce, Yu Chen, Developing a Locally Adaptive Spatial Multilevel Logistic Model to Analyze Ecological Effects on Health Using Individual Census Records, Annals of the American Association of Geographers, 10.1080/24694452.2019.1644990, (1-19), (2019).
- Maria J. Ruiz-Fuensanta, Marco Bellandi, Entrepreneurship dynamics and economic cycles: an analysis for local systems and industrial districts, European Planning Studies, 10.1080/09654313.2019.1629396, (1-21), (2019).
- Paul Harris, A Simulation Study on Specifying a Regression Model for Spatial Data: Choosing between Autocorrelation and Heterogeneity Effects, Geographical Analysis, 10.1111/gean.12163, 51, 2, (151-181), (2018).
- Guanpeng Dong, Levi Wolf, Alekos Alexiou, Dani Arribas-Bel, Inferring neighbourhood quality with property transaction records by using a locally adaptive spatial multi-level model, Computers, Environment and Urban Systems, 10.1016/j.compenvurbsys.2018.09.003, (2018).
- Rory Kramer, Testing the role of barriers in shaping segregation profiles: The importance of visualizing the local neighborhood, Environment and Planning B: Urban Analytics and City Science, 10.1177/2399808318766067, 45, 6, (1106-1121), (2018).
- Isabel Neira, Fernando Bruna, Marta Portela, Adela García-Aracil, Individual Well-Being, Geographical Heterogeneity and Social Capital, Journal of Happiness Studies, 10.1007/s10902-016-9840-z, 19, 4, (1067-1090), (2017).
- Levi John Wolf, Luc Anselin, Daniel Arribas‐Bel, Stochastic Efficiency of Bayesian Markov Chain Monte Carlo in Spatial Econometric Models: An Empirical Comparison of Exact Sampling Methods, Geographical Analysis, 10.1111/gean.12135, 50, 1, (97-119), (2017).
- Jing Ma, Yu Chen, Guanpeng Dong, Flexible Spatial Multilevel Modeling of Neighborhood Satisfaction in Beijing, The Professional Geographer, 10.1080/00330124.2017.1298453, 70, 1, (11-21), (2017).
- Whitney E. Zahnd, Sara L. McLafferty, Contextual effects and cancer outcomes in the United States: a systematic review of characteristics in multilevel analyses, Annals of Epidemiology, 10.1016/j.annepidem.2017.10.002, 27, 11, (739-748.e3), (2017).
- Kanak Kanti Kar, Sung-Kee Yang, Jun-Ho Lee, Fahad Khan Khadim, Regional frequency analysis for consecutive hour rainfall using L-moments approach in Jeju Island, Korea, Geoenvironmental Disasters, 10.1186/s40677-017-0082-0, 4, 1, (2017).
- Diego Fernando Rojas-Gualdrón, Comparing definitions of spatial relations for the analysis of geographic disparities in mortality within a Bayesian mixed-effects framework, Revista Brasileira de Epidemiologia, 10.1590/1980-5497201700030011, 20, 3, (487-500), (2017).
- Donald J. Lacombe, Stuart G. McIntyre, Hierarchical Spatial Econometric Models in Regional Science, Regional Research Frontiers - Vol. 2, 10.1007/978-3-319-50590-9_9, (151-167), (2017).
- Roger Bivand, Zhe Sha, Liv Osland, Ingrid Sandvig Thorsen, A comparison of estimation methods for multilevel models of spatially structured data, Spatial Statistics, 10.1016/j.spasta.2017.01.002, 21, (440-459), (2017).
- Heeyoung Kim, Jaehwan Lee, Hierarchical Spatially Varying Coefficient Process Model, Technometrics, 10.1080/00401706.2017.1317290, 59, 4, (521-527), (2017).
- Jing Ma, Gordon Mitchell, Guanpeng Dong, Wenzhong Zhang, Inequality in Beijing: A Spatial Multilevel Analysis of Perceived Environmental Hazard and Self-Rated Health, Annals of the American Association of Geographers, 10.1080/24694452.2016.1224636, 107, 1, (109-129), (2016).
- Guanpeng Dong, Wenjie Wu, Schools, land markets and spatial effects, Land Use Policy, 10.1016/j.landusepol.2016.09.015, 59, (366-374), (2016).
- Yoshiki Yamagata, Daisuke Murakami, Takahiro Yoshida, Hajime Seya, Sho Kuroda, Value of urban views in a bay city: Hedonic analysis with the spatial multilevel additive regression (SMAR) model, Landscape and Urban Planning, 10.1016/j.landurbplan.2016.02.008, 151, (89-102), (2016).
- Hajime Seya, Yoshiki Yamagata, Kumiko Nakamichi, Creation of municipality level intensity data of electricity in Japan, Applied Energy, 10.1016/j.apenergy.2015.01.143, 162, (1336-1344), (2016).
- Miguel Gómez-Antonio, Miriam Hortas-Rico, Linna Li, The Causes of Urban Sprawl in Spanish Urban Areas: A Spatial Approach, Spatial Economic Analysis, 10.1080/17421772.2016.1126674, 11, 2, (219-247), (2016).
- Guanpeng Dong, Jing Ma, Richard Harris, Gwilym Pryce, Spatial Random Slope Multilevel Modeling Using Multivariate Conditional Autoregressive Models: A Case Study of Subjective Travel Satisfaction in Beijing, Annals of the American Association of Geographers, 10.1080/00045608.2015.1094388, 106, 1, (19-35), (2015).
- Kelvyn Jones, Ron Johnston, David Manley, Dewi Owen, Chris Charlton, Ethnic Residential Segregation: A Multilevel, Multigroup, Multiscale Approach Exemplified by London in 2011, Demography, 10.1007/s13524-015-0430-1, 52, 6, (1995-2019), (2015).
- Edyta Łaszkiewicz, Guanpeng Dong, Richard Harris, The Effect Of Omitted Spatial Effects And Social Dependence In The Modelling Of Household Expenditure For Fruits And Vegetables, Comparative Economic Research. Central and Eastern Europe, 10.2478/cer-2014-0038, 17, 4, (155-172), (2014).




