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IAT
2009
IEEE

Confusion and Distance Metrics as Performance Criteria for Hierarchical Classification Spaces

13 years 8 months ago
Confusion and Distance Metrics as Performance Criteria for Hierarchical Classification Spaces
When intelligent systems reason about complex problems with a large hierarchical classification space it is hard to evaluate system performance. For classification problems, different evaluation criteria exist but these either focus on a belief expressed on all possible, mutually exclusive labels (soft classification) or they are based on the set of labels that are returned by a classifier (hard classification) for hierarchical labels. Measures to evaluate a classifier that assigns belief on all labels when these are hierarchical related however are lacking. This paper puts forward two new criteria for evaluation of soft output for hierarchical labels using a generic and flexible model of the solution space. The first criterion gives information on the accuracy of the system and the second on the robustness. Results with these new criteria are compared to existing criteria for a hierarchical classification task with different classifiers.
Wilbert van Norden, Catholijn M. Jonker
Added 16 Aug 2010
Updated 16 Aug 2010
Type Conference
Year 2009
Where IAT
Authors Wilbert van Norden, Catholijn M. Jonker
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