Guerra interpolation for place cells

Martino Salomone Centonze, Alessandro Treves, Elena Agliari, Adriano Barra
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Abstract

Pyramidal cells that emit spikes when the animal is at specific locations of the environment are known as "place cells": these neurons are thought to provide an internal representation of space via "cognitive maps". Here, we consider the Battaglia-Treves neural network model for cognitive map storage and reconstruction, instantiated with McCulloch & Pitts binary neurons. To quantify the information processing capabilities of these networks, we exploit spin-glass techniques based on Guerra's interpolation: in the low-storage regime (i.e., when the number of stored maps scales sub-linearly with the network size and the order parameters self-average around their means) we obtain an exact phase diagram in the noise vs inhibition strength plane (in agreement with previous findings) by adapting the Hamilton-Jacobi PDE-approach. Conversely, in the high-storage regime, we find that -- for mild inhibition and not too high noise -- memorization and retrieval of an extensive number of spatial maps is indeed possible, since the maximal storage capacity is shown to be strictly positive. These results, holding under the replica-symmetry assumption, are obtained by adapting the standard interpolation based on stochastic stability and are further corroborated by Monte Carlo simulations (and replica-trick outcomes for the sake of completeness). Finally, by relying upon an interpretation in terms of hidden units, in the last part of the work, we adapt the Battaglia-Treves model to cope with more general frameworks, such as bats flying in long tunnels.
地方单元的格拉插值
当动物处于环境的特定位置时会发出尖峰的锥体细胞被称为 "位置细胞":这些神经元被认为是通过 "认知地图 "提供空间的内部表征。在此,我们将考虑使用 McCulloch 和 Pitts 二元神经元实例化的认知地图存储和重建的巴塔利亚-特雷弗斯神经网络模型。为了量化这些网络的信息处理能力,我们利用了基于格拉插值法的旋镜技术:在低存储时间(即相反,在高存储条件下,我们发现--在轻度抑制和噪声不太高的情况下--记忆和检索大量空间地图确实是可能的,因为最大存储容量被证明是严格的正值。这些结果在复制对称假设下成立,是通过调整基于随机稳定性的标准内插法得到的,并通过蒙特卡罗模拟(为完整起见,还包括复制技巧结果)得到进一步证实。最后,通过对隐藏单元的解释,我们在工作的最后一部分调整了巴塔利亚-特雷弗斯模型,以应对更一般的框架,如在长隧道中飞行的蝙蝠。
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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