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Learning semantics-preserving distance metrics for clustering graphical data
2005
Proceedings of the 6th international workshop on Multimedia data mining mining integrated media and complex data - MDM '05
In mining graphical data the default Euclidean distance is often used as a notion of similarity. However this does not adequately capture semantics in our targeted domains, having graphical representations depicting results of scientific experiments. It is seldom known a-priori what other distance metric best preserves semantics. This motivates the need to learn such a metric. A technique called LearnMet is proposed here to learn a domainspecific distance metric for graphical representations.
doi:10.1145/1133890.1133904
dblp:conf/kdd/VardeRRMS05
fatcat:sq2n6hxke5hqphyzu76jxwbc74