Cost-Based Budget Active Learning for Deep Learning

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dc.contributor.author Gikunda, Patrick Kinyua
dc.contributor.author Nicolas Jouandeau
dc.date.accessioned 2021-05-25T15:59:05Z
dc.date.available 2021-05-25T15:59:05Z
dc.date.issued 2020-12
dc.identifier.citation arXiv:2012.05196 en_US
dc.identifier.uri arXiv:2012.05196
dc.identifier.uri http://ceur-ws.org/Vol-2655/paper7.pdf
dc.identifier.uri http://repository.dkut.ac.ke:8080/xmlui/handle/123456789/4743
dc.description.abstract Majorly classical Active Learning (AL) approach usually uses statistical theory such as entropy and margin to measure instance utility, however it fails to capture the data distribution information contained in the unlabeled data. This can eventually cause the classifier to select outlier instances to label. Meanwhile, the loss associated with mislabeling an instance in a typical classification task is much higher than the loss associated with the opposite error. To address these challenges, we propose a Cost-Based Bugdet Active Learning (CBAL) which considers the classification uncertainty as well as instance diversity in a population constrained by a budget. A principled approach based on the min-max is considered to minimize both the labeling and decision cost of the selected instances, this ensures a near-optimal results with significantly less computational effort. Extensive experimental results show that the proposed approach outperforms several state-of -the-art active learning approaches. en_US
dc.language.iso en en_US
dc.publisher Proceedings of the XYZ Workshop en_US
dc.title Cost-Based Budget Active Learning for Deep Learning en_US
dc.type Presentation en_US


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