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Embedding road networks and travel time into distance metrics for urban modelling
Journal article   Peer reviewed

Embedding road networks and travel time into distance metrics for urban modelling

Henry Crosby, Theodore Damoulas and Stephen A. Jarvis
International journal of geographical information science : IJGIS, Vol.33(3), pp.512-536
04/03/2019

Abstract

Computer Science Computer Science, Information Systems Geography Geography, Physical Information Science & Library Science Physical Geography Physical Sciences Science & Technology Social Sciences Technology
Urban environments are restricted by various physical, regulatory and customary barriers such as buildings, one-way systems and pedestrian crossings. These features create challenges for predictive modelling in urban space, as most proximity-based models rely on Euclidean (straight line) distance metrics which, given restrictions within the urban landscape, do not fully capture spatial urban processes. Here, we argue that road distance and travel time provide effective alternatives, and we develop a new low-dimensional Euclidean distance metric based on these distances using an isomap approach. The purpose of this is to produce a valid covariance matrix for Kriging. Our primary methodological contribution is the derivation of two symmetric dissimilarity matrices ( and ), with which it is possible to compute low-dimensional Euclidean metrics for the production of a positive definite covariance matrix with commonly utilised kernels. This new method is implemented into a Kriging predictor to estimate house prices on 3,669 properties in Coventry, UK. We find that a metric estimating a combination of road distance and travel time, in both and , produces a superior house price predictor compared with alternative state-of-the-art methods, that is, a standard Euclidean metric in and a non-restricted road distance metric in and . F
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https://doi.org/10.1080/13658816.2018.1547386View
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