Multi-label Classification with Gene Expression Programming by:
J. Ávila,
E. Gibaja,
S. Ventura
edited by: Emilio Corchado, Xindong Wu, Erkki Oja, Álvaro Herrero, Bruno Baruque| RIS | Export as RIS which can be imported into most citation managers |
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In Hybrid Artificial Intelligence Systems, Vol. 5572 (2009), pp. 629-637. doi:10.1007/978-3-642-02319-4_76 Key: citeulike:8118539
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AbstractIn this paper, we introduce a Gene Expression Programming algorithm for multi label classification. This algorithm encodes each individual into a discriminant function that shows whether a pattern belongs to a given class or not. The algorithm also applies a niching technique to guarantee that the population includes functions for each existing class. In order to evaluate the quality of our algorithm, its performance is compared to that of four recently published algorithms. The results show that our proposal is the best in terms of accuracy, precision and recall.
Multilabel Classification's tags for this articlehttp://www.citeulike.org/group/4310/article/8118539