Consensus clustering for dimensionality reduction

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Date
2014-01-01
Authors
Rani, D. Sandhya
Rani, T. Sobha
Bhavani, S. Durga
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Abstract
Dimensionality reduction continues to be a challenging problem with huge amounts of data being generated in the domains of bio-informatics, social networks etc. We propose a novel dimensionality reduction algorithm based on the idea of consensus clustering using genetic algorithms. Classification is used as validation and the algorithm is evaluated on benchmark data sets of dimensionality ranging from 8 to 617 features. The results are on par with the latest approaches proposed in the literature.
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Keywords
consensus clustering, dimensionality reduction, genetic algorithms
Citation
2014 7th International Conference on Contemporary Computing, IC3 2014