Abstract: 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 intelligent tool that combines capabilities of
neural networks and fuzzy systems together in a synergetic way. Among them, one of the prominent hybrid
systems type is self-learning fuzzy spiking neural networks. They were evolved from fuzzy logic systems and selflearning
spiking neural networks, and revealed considerable computational capabilities. There were proposed
several architectures of self-learning fuzzy spiking neural networks, each handling a particular kind of data
processing tasks (processing fuzzy data, fuzzy probabilistic and possibilistic clustering, batch and adaptive
methods, new clusters detection, irregular form clusters detection, etc). In this paper, known architectures of
self-learning hybrid systems based on spiking neural network are reviewed, compared, and summarized.
A generalized architecture and learning algorithm for self-learning fuzzy spiking neural networks are proposed.
Keywords: computational intelligence, hybrid systems, self-leaning spiking neural network, fuzzy clustering,
temporal Hebbian learning, ’Winner-Takes-More’ rule, control theory, inductive modelling, clusters merging, new
clusters detection, hierarchical clustering .
ACM Classification Keywords: I.2.6 Artificial Intelligence: Learning – Connectionism and neural nets; I.2.8
Artificial Intelligence: Problem Solving, Control Methods, and Search – Control theory; I.5.1 Pattern
Recognition: Models – Fuzzy set, Neural nets; I.5.3 Pattern Recognition: Clustering – Algorithms.
Link:
HYBRID SYSTEMS OF COMPUTATIONAL INTELLIGENCE EVOLVED FROM SELFLEARNING SPIKING NEURAL NETWORK
Yevgeniy Bodyanskiy, Artem Dolotov
http://foibg.com/ibs_isc/ibs-20/ibs-20-p02.pdf