Complex data clustering with single-layer dynamically linked spiking neural network

Бесплатный доступ

An improved method for constructing and training single-layered spiking neural networks is preposed. The method allows to apply single-layered spiking neural networks that encode each data dimension by one neuron of the input layer for the recognition of complex and overlapping clusters with procedure of unsupervised training. The presented approach allows to obtain acceptable accuracy of the classification with the ability to detect complex data clusters at considerably simplified structure of the neural network.

Spiking neural networks, data clustering, unsupervised training, hebb's instruction

Короткий адрес: https://sciup.org/14249360

IDR: 14249360

Статья научная