TopicNeuro

temporal representation

2 Seminars2 ePosters

Latest

SeminarNeuroscience

Unifying the mechanisms of hippocampal episodic memory and prefrontal working memory

James Whittington
Stanford University / University of Oxford
Feb 14, 2024

Remembering events in the past is crucial to intelligent behaviour. Flexible memory retrieval, beyond simple recall, requires a model of how events relate to one another. Two key brain systems are implicated in this process: the hippocampal episodic memory (EM) system and the prefrontal working memory (WM) system. While an understanding of the hippocampal system, from computation to algorithm and representation, is emerging, less is understood about how the prefrontal WM system can give rise to flexible computations beyond simple memory retrieval, and even less is understood about how the two systems relate to each other. Here we develop a mathematical theory relating the algorithms and representations of EM and WM by showing a duality between storing memories in synapses versus neural activity. In doing so, we develop a formal theory of the algorithm and representation of prefrontal WM as structured, and controllable, neural subspaces (termed activity slots). By building models using this formalism, we elucidate the differences, similarities, and trade-offs between the hippocampal and prefrontal algorithms. Lastly, we show that several prefrontal representations in tasks ranging from list learning to cue dependent recall are unified as controllable activity slots. Our results unify frontal and temporal representations of memory, and offer a new basis for understanding the prefrontal representation of WM

SeminarNeuroscience

Using Nengo and the Neural Engineering Framework to Represent Time and Space

Terry Stewart
University of Waterloo and National Research Center Canada
Jul 15, 2020

The Neural Engineering Framework (and the associated software tool Nengo) provide a general method for converting algorithms into neural networks with an adjustable level of biological plausibility. I will give an introduction to this approach, and then focus on recent developments that have shown new insights into how brains represent time and space. This will start with the underlying mathematical formulation of ideal methods for representing continuous time and continuous space, then show how implementing these in neural networks can improve Machine Learning tasks, and finally show how the resulting systems compare to temporal and spatial representations in biological brains.

ePosterNeuroscience

Nonlocal Spatiotemporal Representation in the Hippocampus of Freely Flying Bats

Nicholas Dotson,Michael Yartsev

COSYNE 2022

ePosterNeuroscience

Nonlocal Spatiotemporal Representation in the Hippocampus of Freely Flying Bats

Nicholas Dotson,Michael Yartsev

COSYNE 2022

temporal representation coverage

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Seminar2
ePoster2
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