We advance a novel computational theory of the hippocampal formation as a hierarchical generative model that organizes sequential experiences, such as rodent trajectories during spatial navigation, into coherent spatiotemporal contexts. We propose that the hippocampal generative model is endowed with inductive biases to identify individual items of experience (first hierarchical layer), organize them into sequences (second layer) and cluster them into maps (third layer). This theory entails a novel characterization of hippocampal reactivations as generative replay: the offline resampling of fictive sequences from the generative model, which supports the continual learning of multiple sequential experiences. We show that the model learns and efficiently retains multiple spatial navigation trajectories, by organizing them into spatial maps. Furthermore, the model reproduces flexible and prospective aspects of hippocampal dynamics that are challenging to explain within existing frameworks. This theory reconciles multiple roles of the hippocampal formation in map-based navigation, episodic memory and imagination.
The hippocampal formation as a hierarchical generative model supporting generative replay and continual learning
Stoianov, IvilinPrimo
;Maisto, DomenicoSecondo
;Pezzulo, Giovanni
Ultimo
2022
Abstract
We advance a novel computational theory of the hippocampal formation as a hierarchical generative model that organizes sequential experiences, such as rodent trajectories during spatial navigation, into coherent spatiotemporal contexts. We propose that the hippocampal generative model is endowed with inductive biases to identify individual items of experience (first hierarchical layer), organize them into sequences (second layer) and cluster them into maps (third layer). This theory entails a novel characterization of hippocampal reactivations as generative replay: the offline resampling of fictive sequences from the generative model, which supports the continual learning of multiple sequential experiences. We show that the model learns and efficiently retains multiple spatial navigation trajectories, by organizing them into spatial maps. Furthermore, the model reproduces flexible and prospective aspects of hippocampal dynamics that are challenging to explain within existing frameworks. This theory reconciles multiple roles of the hippocampal formation in map-based navigation, episodic memory and imagination.| File | Dimensione | Formato | |
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The hippocampal formation as a hierarchical generative model supporting generative replay and continual learning.pdf
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Descrizione: Ivilin Stoianov, Domenico Maisto, Giovanni Pezzulo, The hippocampal formation as a hierarchical generative model supporting generative replay and continual learning, Progress in Neurobiology, Volume 217, 2022, 102329, ISSN 0301-0082, https://doi.org/10.1016/j.pneurobio.2022.102329.
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preprint 2020.01.16.908889.full.pdf
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Descrizione: The hippocampal formation as a hierarchical generative model supporting generative replay and continual learning Ivilin Stoianov, Domenico Maisto, Giovanni Pezzulo doi: https://doi.org/10.1101/2020.01.16.908889 File pubblico: https://www.biorxiv.org/content/biorxiv/early/2021/04/18/2020.01.16.908889.full.pdf
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