When and Where: A Model Hippocampal Network Unifies Formation of Time Cells and Place Cells
arXiv cs.AI / 4/2/2026
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Key Points
- The paper proposes a single recurrent neural network model of hippocampal CA3 that can generate both place cells and time cells from the same underlying neural substrate.
- It argues that place cells and time cells correspond to two dynamical regimes of the network, depending on whether the model is trained with spatially structured versus temporally structured (with “void” intervals) experience vectors.
- During spatial navigation, the network yields stable attractor-like representations consistent with place-field formation, while temporally trained inputs produce sequentially broadened activity patterns resembling time cells.
- By varying the spatiotemporal structure of the input, the authors observe a smooth transition in hidden-unit representations between place-cell-like and time-cell-like states, supporting a shared origin with task-dependent differences.
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