TY - JOUR
T1 - Constructing knowledge from multivariate spatiotemporal data
T2 - Integrating geographical visualization with knowledge discovery in database methods
AU - Maceachren, Alan M.
AU - Wachowicz, Monica
AU - Edsall, Robert
AU - Haug, Daniel
AU - Masters, Raymon
PY - 1999
Y1 - 1999
N2 - We present an approach to the process of constructing knowledge through structured exploration of large spatiotemporal data sets. First, we introduce our problem context and define both Geographic Visualization (GVis) and Knowledge Discovery in Databases (KDD), the source domains for methods being integrated. Next, we review and compare recent GVis and KDD developments and consider the potential for their integration, emphasizing that an iterative process with user interaction is a central focus for uncovering interest and meaningful patterns through each. We then introduce an approach to design of an integrated GVis-KDD environment directed to exploration and discovery in the context of spatiotemporal environmental data. The approach emphasizes a matching of GVis and KDD meta-operations. Following description of the GVis and KDD methods that are linked in our prototype system, we present a demonstration of the prototype applied to a typical spatiotemporal dataset. We conclude by outlining, briefly, research goals directed toward more complete integration of GVis and KDD methods and their connection to temporal GIS.
AB - We present an approach to the process of constructing knowledge through structured exploration of large spatiotemporal data sets. First, we introduce our problem context and define both Geographic Visualization (GVis) and Knowledge Discovery in Databases (KDD), the source domains for methods being integrated. Next, we review and compare recent GVis and KDD developments and consider the potential for their integration, emphasizing that an iterative process with user interaction is a central focus for uncovering interest and meaningful patterns through each. We then introduce an approach to design of an integrated GVis-KDD environment directed to exploration and discovery in the context of spatiotemporal environmental data. The approach emphasizes a matching of GVis and KDD meta-operations. Following description of the GVis and KDD methods that are linked in our prototype system, we present a demonstration of the prototype applied to a typical spatiotemporal dataset. We conclude by outlining, briefly, research goals directed toward more complete integration of GVis and KDD methods and their connection to temporal GIS.
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U2 - 10.1080/136588199241229
DO - 10.1080/136588199241229
M3 - Article
AN - SCOPUS:0033374040
SN - 1365-8816
VL - 13
SP - 311
EP - 334
JO - International Journal of Geographical Information Science
JF - International Journal of Geographical Information Science
IS - 4
ER -