Learning Maps to Navigate Space

S. Grossberg
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Abstract

This chapter explains how humans and other animals learn to learn to navigate in space. Both reaching and route-based navigation use difference vector computations. Route navigation learns a labeled graph of angles and distances moved. Spatial navigation requires neurons to learn navigable spaces that can be many meters in size. This is again accomplished by a spectrum of cells. Such spectral spacing supports learning of medial entorhinal grid cells and hippocampal place cells. The model responds to realistic rat navigational trajectories by learning grid cells with hexagonal grid firing fields of multiple spatial scales, and place cells with one or more firing fields, that match neurophysiological data about their development in juvenile rats. Both grid and place cells develop in a hierarchy of self-organizing maps by detecting, learning and remembering the most frequent and energetic co-occurrences of their inputs. Model parsimonious properties include: similar ring attractor mechanisms process linear and angular path integration inputs that drive map learning; the same self-organizing map mechanisms can learn both grid cell and place cell receptive fields; and the learning of the dorsoventral organization of multiple grid cell modules through medial entorhinal cortex to hippocampus uses a gradient of rates that is homologous to a rate gradient that drives adaptively timed learning at multiple rates through lateral entorhinal cortex to hippocampus (‘neural relativity’). The model clarifies how top-down hippocampal-to-entorhinal ART attentional mechanisms stabilize map learning, simulates how hippocampal, septal, or acetylcholine inactivation disrupts grid cells, and explains data about theta, beta and gamma oscillations.
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学习地图导航空间
本章解释了人类和其他动物是如何学会在太空中导航的。到达和基于路线的导航都使用差分向量计算。路线导航学习了一个有标签的角度和移动距离图。空间导航需要神经元学习可导航的空间,这些空间的大小可以是好几米。这也是由一系列细胞完成的。这种谱间隔支持内侧内嗅网格细胞和海马位置细胞的学习。该模型通过学习具有多个空间尺度的六边形网格放电场的网格细胞和具有一个或多个放电场的位置细胞来响应现实的大鼠导航轨迹,这与幼年大鼠发育的神经生理学数据相匹配。网格细胞和位置细胞都是通过检测、学习和记忆输入中最频繁、最活跃的共同出现而形成自组织地图的层次结构。模型的简约性包括:类似的环形吸引子机制处理驱动地图学习的线性和角路径积分输入;相同的自组织映射机制可以同时学习网格细胞和位置细胞的感受野;通过内侧内嗅皮层到海马体的多个网格细胞模块的背腹侧组织的学习使用的速率梯度与通过外侧内嗅皮层到海马体以多种速率驱动自适应定时学习的速率梯度是同源的(“神经相对性”)。该模型阐明了自上而下的海马体到内嗅的ART注意机制是如何稳定地图学习的,模拟了海马体、间隔或乙酰胆碱失活是如何破坏网格细胞的,并解释了theta、beta和gamma振荡的数据。
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