Huang, YanShekhar, ShashiXiong, Hui2020-09-022020-09-022002-10-10https://hdl.handle.net/11299/215536Given a collection of boolean spatial features, the co-location pattern discovery process finds the subsets of features frequently located together. For example, the analysis of an ecology dataset may reveal the frequent co-location of a fire ignition source feature with a needle vegetation type feature and a drought feature. The spatial co-location rule problem is different from the association rule problem. Even though boolean spatial feature types (also called spatial events) may correspond to items in association rules over market-basket datasets, there is no natural notion of transactions. This creates difficulty in using traditional measures (e.g. support, confidence) and applying association rule mining algorithms which use support-based pruning. We propose a notion of user-specifiedneighborhoods in place of transactions to specify groups of items. New interest measures for spatial co-location patterns are proposed which are robust in the face of potentially infinite overlapping neighborhoods. We also propose a family of algorithms to mine frequent spatial co-location patterns. Experimental results are provided to show the strength of each algorithm and design decisions related to performance tuning.en-USDiscovering Co-location Patterns from Spatial Datasets: A General ApproachReport