DOI:10.4018/jdwm.2007070101 - Corpus ID: 11608263
Multi-Label Classification: An Overview
@article{Tsoumakas2007MultiLabelCA, title={Multi-Label Classification: An Overview}, author={Grigorios Tsoumakas and Ioannis Manousos Katakis}, journal={Int. J. Data Warehous. Min.}, year={2007}, volume={3}, pages={1-13}, url={https://api.semanticscholar.org/CorpusID:11608263} }
- Grigorios Tsoumakas, I. Katakis
- Published in International Journal of Data… 1 July 2007
- Computer Science
The task of multi-label classification is introduced, the sparse related literature is organizes into a structured presentation and comparative experimental results of certain multilabel classification methods are performed.
2,766 Citations
Topics
Multi-Label Classification (opens in a new tab)Problem Transformation Methods (opens in a new tab)Single-label Classification (opens in a new tab)Label Cardinality (opens in a new tab)Music Categorization (opens in a new tab)Semantic Scene Classification (opens in a new tab)Multi-label Data (opens in a new tab)Protein Function Classification (opens in a new tab)Multi-label Classifiers (opens in a new tab)Hamming Loss (opens in a new tab)
2,766 Citations
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