Multilevel Modelling with Spatial Interaction Effects with Application to an Emerging Land Market in Beijing, China

This paper develops a methodology for extending multilevel modelling to incorporate spatial interaction effects. The motivation is that classic multilevel models are not specifically spatial. Lower level units may be nested into higher level ones based on a geographical hierarchy (or a membership structure—for example, census zones into regions) but the actual locations of the units and the distances between them are not directly considered: what matters is the groupings but not how close together any two units are within those groupings. As a consequence, spatial interaction effects are neither modelled nor measured, confounding group effects (understood as some sort of contextual effect that acts ‘top down’ upon members of a group) with proximity effects (some sort of joint dependency that emerges between neighbours). To deal with this, we incorporate spatial simultaneous autoregressive processes into both the outcome variable and the higher level residuals. To assess the performance of the proposed method and the classic multilevel model, a series of Monte Carlo simulations are conducted. The results show that the proposed method performs well in retrieving the true model parameters whereas the classic multilevel model provides biased and inefficient parameter estimation in the presence of spatial interactions. An important implication of the study is to be cautious of an apparent neighbourhood effect in terms of both its magnitude and statistical significance if spatial interaction effects at a lower level are suspected. Applying the new approach to a two-level land price data set for Beijing, China, we find significant spatial interactions at both the land parcel and district levels.

[1]  J. Ord,et al.  Spatial Processes: Models and Applications , 1984 .

[2]  D. Griffith,et al.  Advanced Spatial Statistics: Special Topics in the Exploration of Quantitative Spatial Data Series , 1988 .

[3]  L. Anselin Spatial Econometrics: Methods and Models , 1988 .

[4]  Daniel A. Griffith,et al.  Advanced Spatial Statistics , 1988 .

[5]  Kelvyn Jones,et al.  Specifying and estimating multilevel models for geographical research , 1991 .

[6]  J. Besag,et al.  Bayesian image restoration, with two applications in spatial statistics , 1991 .

[7]  Kelvyn Jones Amendment to Specifying and estimating multi-level models for geographical research by Kelvyn Jones (1991) Trans Inst. Br. Geogr. 16: 148-160 , 1992 .

[8]  Noel A Cressie,et al.  Statistics for Spatial Data, Revised Edition. , 1994 .

[9]  Paul Cheshire,et al.  On the Price of Land and the Value of Amenities , 1995 .

[10]  Kelvyn Jones,et al.  Individuals and their ecologies: analysing the geography of chronic illness within a multilevel modelling framework , 1995 .

[11]  H. Goldstein,et al.  Multilevel Modelling of the Geographical Distributions of Diseases , 1999, Journal of the Royal Statistical Society. Series C, Applied statistics.

[12]  Craig Duncan,et al.  Multilevel methods for public health research , 2000 .

[13]  Harvey Goldstein,et al.  Multiple membership multiple classification (MMMC) models , 2001 .

[14]  Sw. Banerjee,et al.  Hierarchical Modeling and Analysis for Spatial Data , 2003 .

[15]  Kelvyn Jones,et al.  Neighbourhoods and Health , 2003 .

[16]  Robert Haining,et al.  Spatial Data Analysis: Theory and Practice , 2003 .

[17]  James P. LeSage,et al.  A BAYESIAN PROBIT MODEL WITH SPATIAL DEPENDENCIES , 2004 .

[18]  Basile Chaix,et al.  Comparison of a spatial approach with the multilevel approach for investigating place effects on health: the example of healthcare utilisation in France , 2005, Journal of Epidemiology and Community Health.

[19]  D. Griffith Effective Geographic Sample Size in the Presence of Spatial Autocorrelation , 2005 .

[20]  Matthew E. Kahn,et al.  Land and Residential Property Markets in a Booming Economy: New Evidence from Beijing , 2006 .

[21]  Stephen W. Raudenbush,et al.  5. Exploiting Spatial Dependence to Improve Measurement of Neighborhood Social Processes , 2009 .

[22]  B. Fingleton,et al.  Where is the Economics in Spatial Econometrics? , 2012 .

[23]  Duncan Lee,et al.  A comparison of conditional autoregressive models used in Bayesian disease mapping. , 2011, Spatial and spatio-temporal epidemiology.

[24]  M. D. Ugarte,et al.  Introduction to Spatial Econometrics , 2011 .

[25]  Guo Tengyun,et al.  Spatial Heterogeneity in Determinants of Residential Land Price: Simulation and Prediction , 2011 .

[26]  Mariana Arcaya,et al.  Area variations in health: a spatial multilevel modeling approach. , 2012, Health & place.

[27]  Rich Harris,et al.  Using Contextualized Geographically Weighted Regression to Model the Spatial Heterogeneity of Land Prices in Beijing, China , 2013, Trans. GIS.

[28]  Badi H. Baltagi,et al.  Spatial Lag Models with Nested Random Effects: An Instrumental Variable Procedure with an Application to English House Prices , 2014 .

[29]  David Steel,et al.  Multiple-membership multiple-classification models for social network and group dependences , 2014, Journal of the Royal Statistical Society. Series A,.

[30]  Guanpeng Dong,et al.  Spatial Autoregressive Models for Geographically Hierarchical Data Structures. Geographical Analysis , 2015 .

[31]  Guanpeng Dong,et al.  The Effect Of Omitted Spatial Effects And Social Dependence In The Modelling Of Household Expenditure For Fruits And Vegetables , 2014 .