TopicNeuroscience
Content Overview
6Total items
3Seminars
3ePosters

Latest

SeminarNeuroscience

Low Dimensional Manifolds for Neural Dynamics

Sara A. Solla
Northwestern University
Jun 9, 2021

The ability to simultaneously record the activity from tens to thousands to tens of thousands of neurons has allowed us to analyze the computational role of population activity as opposed to single neuron activity. Recent work on a variety of cortical areas suggests that neural function may be built on the activation of population-wide activity patterns, the neural modes, rather than on the independent modulation of individual neural activity. These neural modes, the dominant covariation patterns within the neural population, define a low dimensional neural manifold that captures most of the variance in the recorded neural activity. We refer to the time-dependent activation of the neural modes as their latent dynamics. As an example, we focus on the ability to execute learned actions in a reliable and stable manner. We hypothesize that the ability to perform a given behavior in a consistent manner requires that the latent dynamics underlying the behavior also be stable. The stable latent dynamics, once identified, allows for the prediction of various behavioral features, using models whose parameters remain fixed throughout long timespans. We posit that latent cortical dynamics within the manifold are the fundamental and stable building blocks underlying consistent behavioral execution.

SeminarNeuroscienceRecording

Low Dimensional Manifolds for Neural Dynamics

Sara Solla
Northwestern University
May 7, 2021

The ability to simultaneously record the activity from tens to thousands and maybe even tens of thousands of neurons has allowed us to analyze the computational role of population activity as opposed to single neuron activity. Recent work on a variety of cortical areas suggests that neural function may be built on the activation of population-wide activity patterns, the neural modes, rather than on the independent modulation of individual neural activity. These neural modes, the dominant covariation patterns within the neural population, define a low dimensional neural manifold that captures most of the variance in the recorded neural activity. We refer to the time-dependent activation of the neural modes as their latent dynamics, and argue that latent cortical dynamics within the manifold are the fundamental and stable building blocks of neural population activity.

SeminarNeuroscienceRecording

Neural manifolds for the stable control of movement

Sara Solla
Northwestern University
Apr 29, 2020

Animals perform learned actions with remarkable consistency for years after acquiring a skill. What is the neural correlate of this stability? We explore this question from the perspective of neural populations. Recent work suggests that the building blocks of neural function may be the activation of population-wide activity patterns: neural modes that capture the dominant co-variation patterns of population activity and define a task specific low dimensional neural manifold. The time-dependent activation of the neural modes results in latent dynamics. We hypothesize that the latent dynamics associated with the consistent execution of a behaviour need to remain stable, and use an alignment method to establish this stability. Once identified, stable latent dynamics allow for the prediction of various behavioural features via fixed decoder models. We conclude that latent cortical dynamics within the task manifold are the fundamental and stable building blocks underlying consistent behaviour.

ePosterNeuroscience

Efficient learning of low dimensional latent dynamics in multiscale spiking and LFP population activity

Parima Ahmadipour,Omid Sani,Yuxiao Yang,Maryam Shanechi

COSYNE 2022

ePosterNeuroscience

Compositionality of latent dynamics over multiple timescales underlies whole-brain neural activity during spontaneous behavior

Evan Vickers, Scott Linderman, Michael Johnson, Stefano Recanatesi, David McCormick, Luca Mazzucato

COSYNE 2025

ePosterNeuroscience

Identifiable attribution maps with contrastive learning for mapping neurons to neural latent dynamics

Steffen Schneider, Anastasiia Filippova, Rodrigo González Laiz, Markus Frey, Mackenzie W Mathis

FENS Forum 2024

latent dynamics coverage

6 items

Seminar3
ePoster3

Share your knowledge

Know something about latent dynamics? Help the community by contributing seminars, talks, or research.

Contribute content
Domain spotlight

Explore how latent dynamics research is advancing inside Neuroscience.

Visit domain

Cookies

We use essential cookies to run the site. Analytics cookies are optional and help us improve World Wide. Learn more.