Active learning using dirichlet processes for rare class discovery and classification

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Abstract

Real-world classification problems, such as visual surveillance and network intrusion detection, often contain common yet uninteresting background classes and rare but interesting classes, that need to be both discovered and classified. Active learning offers a suitable solution to joint rare class discovery and classification, by minimising the manual labelling of training data. A novel active learning approach is proposed, which automatically balances the competing goals of new class discovery and improving classification. Crucially it is free of tuneable parameters. Using Dirichlet processes a new active learning criterion is formulated, based on first computing the probability that unla-belled exemplars are from a new class, in addition to existing classes, and subsequently the probability of misclassification, which is then used for query selection. The proposed approach works with any probabilistic classification model and its effectiveness is demonstrated on multiple problems. © 2011. The copyright of this document resides with its authors.

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Haines, T. S. F., & Xiang, T. (2011). Active learning using dirichlet processes for rare class discovery and classification. In BMVC 2011 - Proceedings of the British Machine Vision Conference 2011. British Machine Vision Association, BMVA. https://doi.org/10.5244/C.25.9

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