Cost-sensitive learning by cost-proportionate example weighting
IBM Research - Thomas J. Watson Research Center · Toyota Technological Institute at Chicago
Abstract
We propose and evaluate a family of methods for converting classifier learning algorithms and classification theory into cost-sensitive algorithms and theory. The proposed conversion is based on cost-proportionate weighting of the training examples, which can be realized either by feeding the weights to the classification algorithm (as often done in boosting), or by careful subsampling. We give some theoretical performance guarantees on the proposed methods, as well as empirical evidence that they are practical alternatives to existing approaches. In particular, we propose costing, a method based on cost-proportionate rejection sampling and ensemble aggregation, which achieves excellent predictive performance…
Citation impact
- FWCI
- 27.29
- Percentile
- 100%
- References
- 26
Authors
3Topics & keywords
- Boosting (machine learning)
- Weighting
- Activity-based costing
- Computer science
- Computation
- Classifier (UML)
- Machine learning
- Artificial intelligence