http://www.svcl.ucsd.edu/projects/CostLearning/
Cost Sensitive Learning
| Cost Sensitive Learning | |||||||
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Classification problems such as fraud detection, medical diagnosis, or object detection in computer vision, are naturally cost sensitive. In these problems the cost of missing a target is much higher than that of a false-positive, and classifiers that are optimal under symmetric costs (such as the popular zero-one loss) tend to under perform. The design of optimal classifiers with respect to losses that weigh certain types of errors more heavily than others is denoted as cost-sensitive learning. |
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| Publications: |
Cost-Sensitive Boosting. Hamed Masnadi-Shirazi and Nuno Vasconcelos IEEE Trans. Pattern Analysis and Machine Intelligence, 2010. [pdf] Risk minimization, probability elicitation, and cost-sensitive SVMs High Detection-rate Cascades for Real-Time Object Detection. |
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| Asymmetric Boosting Hamed Masnadi-Shirazi and Nuno Vasconcelos Proceedings of International Conference on Machine Learning (ICML), Corvallis, OR, May 2007. [pdf] |
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| Contact: | Nuno Vasconcelos, Hamed Masnadi-Shirazi | ||||||