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Geospatial data mining for digital raster mapping
Authors:Bruce K. Wylie  Neal J. Pastick  Joshua J. Picotte  Carol A. Deering
Affiliation:1. U.S. Geological Survey, Earth Resources Observation and Science (EROS) Center, Science Division, 47914 252 St., Sioux Falls, SD 57198, USA;2. Stinger Ghaffarian Technologies, Inc., Contractor to U.S. Geological Survey Earth Resources Observation and Science (EROS) Center, 47914 252 St., Sioux Falls, SD 57198, USA;3. Department of Forest Resources, University of Minnesota, St. Paul, MN 55108, USA;4. ASRC Federal InuTeq, LLC, Contractor to U.S. Geological Survey Earth Resources Observation and Science (EROS) Center, 47914 252 St., Sioux Falls, SD 57198, USA;5. Innovate!, Inc, Contractor to U.S. Geological Survey Earth Resources Observation and Science (EROS) Center, 47914 252 St., Sioux Falls, SD 57198, USA
Abstract:We performed an in-depth literature survey to identify the most popular data mining approaches that have been applied for raster mapping of ecological parameters through the use of Geographic Information Systems (GIS) and remotely sensed data. Popular data mining approaches included decision trees or “data mining” trees which consist of regression and classification trees, random forests, neural networks, and support vector machines. The advantages of each data mining approach as well as approaches to avoid overfitting are subsequently discussed. We also provide suggestions and examples for the mapping of problematic variables or classes, future or historical projections, and avoidance of model bias. Finally, we address the separate issues of parallel processing, error mapping, and incorporation of “no data” values into modeling processes. Given the improved availability of digital spatial products and remote sensing products, data mining approaches combined with parallel processing potentials should greatly improve the quality and extent of ecological datasets.
Keywords:Random Forests  classification and regression tree  CUBIST  See5  support vector machines  neural networks  mapping
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