Ovarian Cancer Diagnosis Using Fuzzy Neural Networks Empowered By Evolutionary Clustering Technique

@article{Wang2006OvarianCD,
  title={Ovarian Cancer Diagnosis Using Fuzzy Neural Networks Empowered By Evolutionary Clustering Technique},
  author={Di Wang and Geok See Ng and Hiok Chai Quek},
  journal={2006 IEEE International Conference on Evolutionary Computation},
  year={2006},
  pages={2764-2770}
}
As computational power of modern computer increases exponentially, more efficient computerized solutions are possible for complex real world applications. However, the solutions are usually not interpretable to human beings such as the opaqueness of traditional neural networks. In this paper, we propose a fuzzy neural network that is empowered by genetic algorithm based rough set clustering (GARSC) technique. The system is capable to address real world problems not only with promising accuracy… CONTINUE READING

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