作者
Carina Curto, Elizabeth Gross, Jack Jeffries, Katherine Morrison, Mohamed Omar, Zvi Rosen, Anne Shiu, Nora Youngs
发表日期
2017
期刊
SIAM Journal on Applied Algebra and Geometry
卷号
1
期号
1
页码范围
222-238
出版商
Society for Industrial and Applied Mathematics
简介
Neural codes allow the brain to represent, process, and store information about the world. Combinatorial codes, comprised of binary patterns of neural activity, encode information via the collective behavior of populations of neurons. A code is called convex if its codewords correspond to regions defined by an arrangement of convex open sets in Euclidean space. Convex codes have been observed experimentally in many brain areas, including sensory cortices and the hippocampus, where neurons exhibit convex receptive fields. What makes a neural code convex? That is, how can we tell from the intrinsic structure of a code if there exists a corresponding arrangement of convex open sets? In this work, we provide a complete characterization of local obstructions to convexity. This motivates us to define max intersection-complete codes, a family guaranteed to have no local obstructions. We then show how our …
引用总数
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学术搜索中的文章
C Curto, E Gross, J Jeffries, K Morrison, M Omar… - SIAM Journal on Applied Algebra and Geometry, 2017