Corpus ID: 7426525

HYBRID SYSTEMS OF COMPUTATIONAL INTELLIGENCE EVOLVED FROM SELF- LEARNING SPIKING NEURAL NETWORK

@inproceedings{Dolotov2010HYBRIDSO,
  title={HYBRID SYSTEMS OF COMPUTATIONAL INTELLIGENCE EVOLVED FROM SELF- LEARNING SPIKING NEURAL NETWORK},
  author={A. Dolotov},
  year={2010}
}
Computational intelligence paradigm covers several approaches for technical problems solving in an intelligence manner, such as artificial neural networks, fuzzy logic systems, evolutionary computation, etc. Each approach provides engineers and researchers with the smart and powerful tools to handle various real-life concerns. Even more powerful tools were designed at the joint of different computational intelligence approaches. Neuro-fuzzy systems, for example, are well-known and advanced… Expand
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