Novelty Discovery with Kernel Minimum Enclosing Balls.

LION(2020)

引用 5|浏览37
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摘要
We introduce the idea of utilizing ensembles of Kernel Minimum Enclosing Balls to detect novel datapoints. To this end, we propose a novelty scoring methodology that is based on combining outcomes of the corresponding characteristic functions of a set of fitted balls. We empirically evaluate our model by presenting experiments on synthetic as well as real world datasets.
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discovery
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