Aggregation of multi-objective fuzzy symmetry-based clustering techniques for improving gene and cancer classification

@article{Saha2018AggregationOM,
  title={Aggregation of multi-objective fuzzy symmetry-based clustering techniques for improving gene and cancer classification},
  author={Sriparna Saha and Ranjita Das and Partha Pakray},
  journal={Soft Computing},
  year={2018},
  volume={22},
  pages={5935-5954}
}
The current work reports about the application of a cluster ensemble approach in combining results produced by some multiobjective-based clustering techniques. Firstly, some multiobjective-based fuzzy clustering techniques are developed using the search capabilities of differential evolution and particle swarm optimization. Both these clustering techniques utilize a recently developed point symmetry-based distance for allocation of points to different clusters. The appropriate partitioning from… 
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