Learning neural connectivity from firing activity: efficient algorithms with provable guarantees on topology
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Publication:1628244
DOI10.1007/S10827-018-0678-8zbMath1402.92021DBLPjournals/jcns/KarbasiSV18OpenAlexW2790556169WikidataQ49721923 ScholiaQ49721923MaRDI QIDQ1628244
Amir Hesam Salavati, Amin Karbasi, Martin Vetterli
Publication date: 4 December 2018
Published in: Journal of Computational Neuroscience (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1007/s10827-018-0678-8
Neural biology (92C20) Neural networks for/in biological studies, artificial life and related topics (92B20)
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