2013 IEEE International Conference on Robotics and Automation 2013
DOI: 10.1109/icra.2013.6631221
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Knowing when we don't know: Introspective classification for mission-critical decision making

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Cited by 31 publications
(25 citation statements)
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“…Concretely, we introduce a formal definition of over-and underconfidence of a classifier on a given data set. This is related to the intuitive notion of introspection introduced by Grimmett et al [1], however with the di↵erence that our formulation can explicitly quantify the inherent trade-o↵ between a high number of detected misclassifications and a high number of correct classifications that are not further used for training.…”
Section: A Related Workmentioning
confidence: 99%
See 3 more Smart Citations
“…Concretely, we introduce a formal definition of over-and underconfidence of a classifier on a given data set. This is related to the intuitive notion of introspection introduced by Grimmett et al [1], however with the di↵erence that our formulation can explicitly quantify the inherent trade-o↵ between a high number of detected misclassifications and a high number of correct classifications that are not further used for training.…”
Section: A Related Workmentioning
confidence: 99%
“…If we follow the first idea, then a good choice for a classifier is the Gaussian Process classifier (GPC), as was shown earlier [1], [15], because due to its capability to marginalize over a range of potential models, its uncertainty estimates are more reliable because they correlate more with actual misclassifications (see [1] for more details). One major problem however, is its huge demand in run time and memory.…”
Section: Online Confidence Boostingmentioning
confidence: 99%
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“…To combat this and also maximise flexibility, we use activelearning algorithms in which a human works in the loop with the machine to answer the most challenging classifications as chosen by the algorithm, thus reducing the labelling quantity for a given desired performance level. In order to further reduce the labelling effort, we make use of introspective active learning algorithms [14].…”
Section: Localisation and Multi-session Mappingmentioning
confidence: 99%