Self-Supervised Learning of Representations for Space Generates Multi-Modular Grid Cells
Rylan Schaeffer, Mikail Khona, Tzuhsuan Ma, Crist\'obal Eyzaguirre,, Sanmi Koyejo, Ila Rani Fiete

TL;DR
This paper introduces a self-supervised learning framework that enables neural networks to develop multi-modular grid cell representations, shedding light on their biological origins and advancing unsupervised spatial encoding methods.
Contribution
It proposes a novel SSL approach combining insights from multiple fields to generate grid cell modules without supervised position data or engineered readouts.
Findings
Multiple grid cell modules emerge in trained networks.
Networks generalize well beyond training data.
The approach offers new insights into biological grid cell formation.
Abstract
To solve the spatial problems of mapping, localization and navigation, the mammalian lineage has developed striking spatial representations. One important spatial representation is the Nobel-prize winning grid cells: neurons that represent self-location, a local and aperiodic quantity, with seemingly bizarre non-local and spatially periodic activity patterns of a few discrete periods. Why has the mammalian lineage learnt this peculiar grid representation? Mathematical analysis suggests that this multi-periodic representation has excellent properties as an algebraic code with high capacity and intrinsic error-correction, but to date, there is no satisfactory synthesis of core principles that lead to multi-modular grid cells in deep recurrent neural networks. In this work, we begin by identifying key insights from four families of approaches to answering the grid cell question: coding…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Cell Image Analysis Techniques · Neural dynamics and brain function
