Neo-fuzzy approach for medical diagnostics tasks in online-mode

  title={Neo-fuzzy approach for medical diagnostics tasks in online-mode},
  author={Iryna Perova and Iryna Pliss and Gennadiy I. Churyumov and F. M. Eze and Samer Mohamed Kanaan Mahmoud},
  journal={2016 IEEE First International Conference on Data Stream Mining \& Processing (DSMP)},
  • I. Perova, I. Pliss, S. M. Mahmoud
  • Published 1 August 2016
  • Computer Science
  • 2016 IEEE First International Conference on Data Stream Mining & Processing (DSMP)
In this paper neuro-fuzzy approach for medical data processing are considered. Architecture of multidimensional neo-fuzzy neuron and group of its adaptive learning algorithms was introduced for Medical Data Mining tasks in online-mode. 

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