Sorower, 2010 - Google Patents
A literature survey on algorithms for multi-label learningSorower, 2010
View PDF- Document ID
- 11211211207326445005
- Author
- Sorower M
- Publication year
- Publication venue
- Oregon State University, Corvallis
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Snippet
Multi-label Learning is a form of supervised learning where the classification algorithm is required to learn from a set of instances, each instance can belong to multiple classes and so after be able to predict a set of class labels for a new instance. This is a generalized …
- 238000011156 evaluation 0 abstract description 23
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