Analyzing spatiotemporal autocorrelation would be helpful to understand the underlying dynamic patterns in space and time simultaneously. In this work, we aim to extend the conventional spatial autocorrelation statistics to a more general framework considering both spatial and temporal dimensions. Specifically, we focus on the spatiotemporal version of Getis-Ord's G * . The proposed indicator STG * can quantify the local association of adjacent features in space and time. As a proof of concept, the proposed method is then applied in a large-scale GPS-enabled taxi dataset to identify local spatiotemporal autocorrelation patterns of taxi pick-ups and drop-offs in New York City.
CITATION STYLE
Gao, S., Zhu, R., & Mai, G. (2016). Identifying Local Spatiotemporal Autocorrelation Patterns of Taxi Pick-ups and Dropoffs. International Conference on GIScience Short Paper Proceedings, 1. https://doi.org/10.21433/b31104b2d8xp
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