Infinite systems of interacting chains with memory of variable length -- a stochastic model for biological neural nets
DOI10.1007/s10955-013-0733-9zbMath1276.82046arXiv1212.5505OpenAlexW3100738684WikidataQ56592766 ScholiaQ56592766MaRDI QIDQ358679
Eva Löcherbach, Antonio Galves
Publication date: 9 August 2013
Published in: Journal of Statistical Physics (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1212.5505
interacting particle systemsbiological neural netschains of infinite memorychains of variable-length memoryKalikow-decomposition
Interacting particle systems in time-dependent statistical mechanics (82C22) Neural nets applied to problems in time-dependent statistical mechanics (82C32)
Related Items (35)
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