Lin, 2015 - Google Patents
Reduction from cost-sensitive multiclass classification to one-versus-one binary classificationLin, 2015
View PDF- Document ID
- 9643735258606394652
- Author
- Lin H
- Publication year
- Publication venue
- Asian Conference on Machine Learning
External Links
Snippet
Many real-world applications require varying costs for different types of mis-classification errors. Such a cost-sensitive classification setup can be very different from the regular classification one, especially in the multiclass case. Thus, traditional meta-algorithms for …
- 230000001603 reducing 0 title description 13
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