作者
Carina Curto, Anda Degeratu, Vladimir Itskov
发表日期
2012/3
期刊
Bulletin of mathematical biology
卷号
74
页码范围
590-614
出版商
Springer-Verlag
简介
Networks of neurons in some brain areas are flexible enough to encode new memories quickly. Using a standard firing rate model of recurrent networks, we develop a theory of flexible memory networks. Our main results characterize networks having the maximal number of flexible memory patterns, given a constraint graph on the network’s connectivity matrix. Modulo a mild topological condition, we find a close connection between maximally flexible networks and rank 1 matrices. The topological condition is H 1(X;ℤ)=0, where X is the clique complex associated to the network’s constraint graph; this condition is generically satisfied for large random networks that are not overly sparse. In order to prove our main results, we develop some matrix-theoretic tools and present them in a self-contained section independent of the neuroscience context.
引用总数
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学术搜索中的文章
C Curto, A Degeratu, V Itskov - Bulletin of mathematical biology, 2012