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International Journal of Advanced Research in Computer and Communication Engineering A monthly Peer-reviewed & Refereed journal
ISSN Online 2278-1021ISSN Print 2319-5940Since 2012
IJARCCE adheres to the suggestive parameters outlined by the University Grants Commission (UGC) for peer-reviewed journals, upholding high standards of research quality, ethical publishing, and academic excellence.
← Back to VOLUME 6, ISSUE 2, FEBRUARY 2017

Addressing Multilabel Classification Problem Via Co-evolutionary Learning Algorithm

Gayatri T. Urade, Prof. Pravin G. Kulurkar

DOI: 10.17148/IJARCCE.2017.62122

Abstract: Multi-label classification refers to the task of predicting potentially multiple labels for a given instance. Conventional multi-label classification approaches focus on the single objective setting, where the learning algorithm optimizes over a single performance criterion (e.g.Ranking Loss) or a heuristic function. The basic assumption is that the optimization over one single objective can improve the overall performance of multi-label classification and meet the requirements of various applications. However, in many real applications, an optimal multi-label classifier may need to consider the tradeos among multiple conflicting objectives, such as minimizing Hamming Loss and maximizing Micro F1.



Keywords: Muti Label, Web, Learning, Memory efficiency.

How to Cite:

[1] Gayatri T. Urade, Prof. Pravin G. Kulurkar, “Addressing Multilabel Classification Problem Via Co-evolutionary Learning Algorithm,” International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), DOI: 10.17148/IJARCCE.2017.62122