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Information Transfer

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TopicWorld Wide

information transfer

Discover seminars, jobs, and research tagged with information transfer across World Wide.
10 curated items6 Seminars4 ePosters
Updated almost 2 years ago
10 items · information transfer
10 results
SeminarNeuroscience

Hippocampal sequences in temporal association memory and information transfer

Nick Robinson
University of Edinburgh, UK
Jan 24, 2024
SeminarNeuroscience

Representation transfer and signal denoising through topographic modularity

Barna Zajzon
Morrison lab, Forschungszentrum Jülich, Germany
Nov 3, 2021

To prevail in a dynamic and noisy environment, the brain must create reliable and meaningful representations from sensory inputs that are often ambiguous or corrupt. Since only information that permeates the cortical hierarchy can influence sensory perception and decision-making, it is critical that noisy external stimuli are encoded and propagated through different processing stages with minimal signal degradation. Here we hypothesize that stimulus-specific pathways akin to cortical topographic maps may provide the structural scaffold for such signal routing. We investigate whether the feature-specific pathways within such maps, characterized by the preservation of the relative organization of cells between distinct populations, can guide and route stimulus information throughout the system while retaining representational fidelity. We demonstrate that, in a large modular circuit of spiking neurons comprising multiple sub-networks, topographic projections are not only necessary for accurate propagation of stimulus representations, but can also help the system reduce sensory and intrinsic noise. Moreover, by regulating the effective connectivity and local E/I balance, modular topographic precision enables the system to gradually improve its internal representations and increase signal-to-noise ratio as the input signal passes through the network. Such a denoising function arises beyond a critical transition point in the sharpness of the feed-forward projections, and is characterized by the emergence of inhibition-dominated regimes where population responses along stimulated maps are amplified and others are weakened. Our results indicate that this is a generalizable and robust structural effect, largely independent of the underlying model specificities. Using mean-field approximations, we gain deeper insight into the mechanisms responsible for the qualitative changes in the system’s behavior and show that these depend only on the modular topographic connectivity and stimulus intensity. The general dynamical principle revealed by the theoretical predictions suggest that such a denoising property may be a universal, system-agnostic feature of topographic maps, and may lead to a wide range of behaviorally relevant regimes observed under various experimental conditions: maintaining stable representations of multiple stimuli across cortical circuits; amplifying certain features while suppressing others (winner-take-all circuits); and endow circuits with metastable dynamics (winnerless competition), assumed to be fundamental in a variety of tasks.

SeminarNeuroscienceRecording

How single neuron dynamics influence network activity and behaviour

Fleur Zeldenrust
Donders Institute for Brain, Cognition and Behaviour
Jun 1, 2021

To understand how the brain can perform complex tasks such as perception, we have to understand how information enters the brain, how it is transformed and how it is transferred. But, how do we measure information transfer in the brain? This presentation will start with a general introduction of what mutual information is and how to measure it in an experimental setup. Next, the talk will focus on how this can be used to develop brain models at different (spatial) levels, from the microscopic single neuron level to the macroscopic network and behavioural level. How can we incorporate the knowledge about single neurons, that already show complex dynamics, into network activity and link this to behaviour?

SeminarNeuroscience

Information transfer in (barrel) cortex: from single cell to network

Fleur Zeldenrust
Department of Neurophysiology, Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, the Netherlands
Nov 22, 2020
SeminarPhysics of Life

Finding Needles in Genomic Haystacks

Robert Phillips
California Institute of Technology
Aug 31, 2020

The ability to read the DNA sequences of different organisms has transformed biology in much the same way that the telescope transformed astronomy. And yet, much of the sequence found in these genomes is as enigmatic as the Rosetta Stone was to early Egyptologists. With the aim of making steps to crack the genomic Rosetta Stone, I will describe unexpected ways of using the physics of information transfer first developed at Bell Labs for thinking about telephone communications to try to decipher the meaning of the regulatory features of genomes. Specifically, I will show how we have been able to explore genes for which we know nothing about how they are regulated by using a combination of mutagenesis, deep sequencing and the physics of information, with the result that we now have falsifiable hypotheses about how those genes work. With those results in hand, I will show how simple tools from statistical physics can be used to predict the level of expression of different genes, followed by a description of precision measurements used to test those predictions. Bringing the two threads of the talk together, I will think about next steps in reading and writing genomes at will.

ePoster

Information transfer during dyadic interactions in perceptual decision-making.

Juan Fiorenza, Michael Wibral

Bernstein Conference 2024

ePoster

Learning beyond the synapse: activity-dependent myelination, neural correlations, and information transfer

Jeremie Lefebvre & Afroditi Talidou

COSYNE 2023

ePoster

Coordinated Multi-frequency Oscillatory Bursts Enable Time-structured Dynamic Information Transfer

Jung Young Kim, Jee Hyun Choi, Demian Battaglia

COSYNE 2025

ePoster

Investigating information transfer at the single-cell level using ultra low-density neuronal networks

Giulia Amos, Katarina Vulić, Jens Duru, Tim Schmid, Benedikt Maurer, Sean Weaver, Stephan J. Ihle, János Vörös

FENS Forum 2024