神经元随机压缩编码

IF 7.5 1区 生物学 Q1 CELL BIOLOGY
Simone Blanco Malerba, Mirko Pieropan, Yoram Burak, Rava Azeredo da Silveira
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引用次数: 0

摘要

神经元高效编码的经典模型假设了简单的平均反应--"调谐曲线",如刺激特征的钟形或单调函数。然而,真实的神经元可能更加复杂:例如,网格细胞会表现出周期性的反应,从而传递出高精度的神经群编码。但是,高精度代码是否需要对反应特性进行微调?我们利用一个简单的模型来解决这个问题:具有随机、空间扩展和不规则调谐曲线的神经元群。不规则性增强了代码的局部分辨率,但也会导致灾难性的全局错误。在调谐曲线达到最佳平滑度时,当局部和全局误差达到平衡时,神经群会将连续刺激的信息压缩到低维表示中,由此产生的分布式代码会达到指数精度。对猴子运动皮层记录的分析表明了这种 "压缩高效编码"。高效编码不需要精细的设计--它们能从不规则性或随机性中稳健地产生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random compressed coding with neurons.

Classical models of efficient coding in neurons assume simple mean responses-"tuning curves"- such as bell-shaped or monotonic functions of a stimulus feature. Real neurons, however, can be more complex: grid cells, for example, exhibit periodic responses that impart the neural population code with high accuracy. But do highly accurate codes require fine-tuning of the response properties? We address this question with the use of a simple model: a population of neurons with random, spatially extended, and irregular tuning curves. Irregularity enhances the local resolution of the code but gives rise to catastrophic, global errors. For optimal smoothness of the tuning curves, when local and global errors balance out, the neural population compresses information about a continuous stimulus into a low-dimensional representation, and the resulting distributed code achieves exponential accuracy. An analysis of recordings from monkey motor cortex points to such "compressed efficient coding." Efficient codes do not require a finely tuned design-they emerge robustly from irregularity or randomness.

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来源期刊
Cell reports
Cell reports CELL BIOLOGY-
CiteScore
13.80
自引率
1.10%
发文量
1305
审稿时长
77 days
期刊介绍: Cell Reports publishes high-quality research across the life sciences and focuses on new biological insight as its primary criterion for publication. The journal offers three primary article types: Reports, which are shorter single-point articles, research articles, which are longer and provide deeper mechanistic insights, and resources, which highlight significant technical advances or major informational datasets that contribute to biological advances. Reviews covering recent literature in emerging and active fields are also accepted. The Cell Reports Portfolio includes gold open-access journals that cover life, medical, and physical sciences, and its mission is to make cutting-edge research and methodologies available to a wide readership. The journal's professional in-house editors work closely with authors, reviewers, and the scientific advisory board, which consists of current and future leaders in their respective fields. The advisory board guides the scope, content, and quality of the journal, but editorial decisions are independently made by the in-house scientific editors of Cell Reports.
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