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ICML
2005
IEEE

Ensembles of biased classifiers

15 years 19 days ago
Ensembles of biased classifiers
We propose a novel ensemble learning algorithm called Triskel, which has two interesting features. First, Triskel learns an ensemble of classifiers, each biased to have high precision on instances from a single class (as opposed to, for example, boosting, where the ensemble members are biased to maximise accuracy over a subset of instances from all classes). Second, the ensemble members' voting weights are assigned so that certain pairs of biased classifiers outweigh the rest of the ensemble, if their predictions agree. Our experiments demonstrate that Triskel often outperforms boosting, in terms of both accuracy and training time. We also present an ROC analysis, which shows that Triskel's iterative structure corresponds to a sequence of nested ROC spaces. The analysis predicts that Triskel works best when there are concavities in the ROC curves; this prediction agrees with our empirical results.
Andreas Heß, Nicholas Kushmerick, Rinat Khou
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 2005
Where ICML
Authors Andreas Heß, Nicholas Kushmerick, Rinat Khoussainov
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