大脑中的吸引器和整合器网络

IF 28.7 1区 医学 Q1 NEUROSCIENCES Nature Reviews Neuroscience Pub Date : 2022-11-03 DOI:10.1038/s41583-022-00642-0
Mikail Khona, Ila R. Fiete
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引用次数: 61

摘要

在这篇综述中,我们描述了吸引子神经网络模型在描述大脑如何维持工作记忆的持续活动状态、纠正错误和整合噪声线索方面所取得的巨大成功。我们考虑了简单单元和遗忘单元如何组织起来,共同产生此类计算所需的长时间尺度动态的机制。我们讨论了吸引子动力学在大脑计算中的无数潜在用途,并展示了大脑系统的显著实例,其中固有的低维连续吸引子动力学已被具体而严格地识别出来。因此,我们现在可以确凿地指出,大脑构建并使用这种系统进行计算。最后,我们着重介绍了最近的理论进展,即如何通过重复使用和重组同一组模块化吸引子来实现多种功能,从而克服鲁棒性与容量之间以及结构与灵活性之间的基本权衡,使它们共同产生结构受限、鲁棒性强但容量大且灵活的表征。吸引子网络动力学可支持大脑进行多种计算。在他们的综述中,科纳和菲特介绍了不同的吸引子动力学及其计算效用,描述了大脑中吸引子网络的证据,并解释了如何重组这些网络以提高其灵活性和多功能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Attractor and integrator networks in the brain
In this Review, we describe the singular success of attractor neural network models in describing how the brain maintains persistent activity states for working memory, corrects errors and integrates noisy cues. We consider the mechanisms by which simple and forgetful units can organize to collectively generate dynamics on the long timescales required for such computations. We discuss the myriad potential uses of attractor dynamics for computation in the brain, and showcase notable examples of brain systems in which inherently low-dimensional continuous-attractor dynamics have been concretely and rigorously identified. Thus, it is now possible to conclusively state that the brain constructs and uses such systems for computation. Finally, we highlight recent theoretical advances in understanding how the fundamental trade-offs between robustness and capacity and between structure and flexibility can be overcome by reusing and recombining the same set of modular attractors for multiple functions, so they together produce representations that are structurally constrained and robust but exhibit high capacity and are flexible. Attractor network dynamics can support several computations performed by the brain. In their Review, Khona and Fiete introduce different attractor dynamics and their computational utility, describe evidence of attractor networks across the brain and explain how such networks could be recombined to increase their flexibility and versatility.
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期刊介绍: Nature Reviews Neuroscience is a multidisciplinary journal that covers various fields within neuroscience, aiming to offer a comprehensive understanding of the structure and function of the central nervous system. Advances in molecular, developmental, and cognitive neuroscience, facilitated by powerful experimental techniques and theoretical approaches, have made enduring neurobiological questions more accessible. Nature Reviews Neuroscience serves as a reliable and accessible resource, addressing the breadth and depth of modern neuroscience. It acts as an authoritative and engaging reference for scientists interested in all aspects of neuroscience.
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