Extending Moran's Index for Measuring Spatiotemporal Clustering of Geographic Events |
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Authors: | Jay Lee Shengwen Li |
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Institution: | 1. College of Environment and Planning, Henan University, Kaifeng, Henan, China;2. Department of Geography, Kent State University, Kent, OH, USA;3. Department of Information Engineering, China University of Geosciences, Wuhan, 430074, China |
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Abstract: | Moran's Index for spatial autocorrelation and localized index for spatial association have been widely applied in many research fields as the first step to explore and assess the spatial dependency in a set of geographic events. This article presents extensions to the equations for calculating global and localized spatial autocorrelation so to include the temporal attribute values of the geographic events being analyzed. The extended equations were successfully implemented and tested with a real world data set. In addition, simulated data sets were used to reveal how the extended equations performed. Beyond the usefulness of the extended equations, we suggest that care be taken with regard to assessing spatiotemporal patterns under the normality and randomization assumptions as different outcomes from different assumptions would require different approaches for interpretation. |
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