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Priors

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priors

Discover seminars, jobs, and research tagged with priors across World Wide.
22 curated items14 ePosters7 Seminars1 Position
Updated 3 days ago
22 items · priors
22 results
Position

Alejandro Tabas

Max Planck Institute CBS
Leipzig
Dec 5, 2025

ERC-funded PhD/Postdoc position on how our priors shape the way we experience reality. Methods include ultra-high-resolution fMRI of the auditory pathway at 7-Tesla and computational modelling. The position will be based at the Max Planck Institute CBS in Leipzig.

SeminarNeuroscienceRecording

Neural Circuit Mechanisms of Pattern Separation in the Dentate Gyrus

Alessandro Galloni
Rutgers University
May 31, 2022

The ability to discriminate different sensory patterns by disentangling their neural representations is an important property of neural networks. While a variety of learning rules are known to be highly effective at fine-tuning synapses to achieve this, less is known about how different cell types in the brain can facilitate this process by providing architectural priors that bias the network towards sparse, selective, and discriminable representations. We studied this by simulating a neuronal network modelled on the dentate gyrus—an area characterised by sparse activity associated with pattern separation in spatial memory tasks. To test the contribution of different cell types to these functions, we presented the model with a wide dynamic range of input patterns and systematically added or removed different circuit elements. We found that recruiting feedback inhibition indirectly via recurrent excitatory neurons proved particularly helpful in disentangling patterns, and show that simple alignment principles for excitatory and inhibitory connections are a highly effective strategy.

SeminarNeuroscienceRecording

Deep Internal learning -- Deep Visual Inference without prior examples

Michal Irani
Weizmann Inst.
Dec 20, 2021
SeminarNeuroscienceRecording

NMC4 Keynote: Formation and update of sensory priors in working memory and perceptual decision making tasks

Athena Akrami
University College London
Dec 1, 2021

The world around us is complex, but at the same time full of meaningful regularities. We can detect, learn and exploit these regularities automatically in an unsupervised manner i.e. without any direct instruction or explicit reward. For example, we effortlessly estimate the average tallness of people in a room, or the boundaries between words in a language. These regularities and prior knowledge, once learned, can affect the way we acquire and interpret new information to build and update our internal model of the world for future decision-making processes. Despite the ubiquity of passively learning from the structured information in the environment, the mechanisms that support learning from real-world experience are largely unknown. By combing sophisticated cognitive tasks in human and rats, neuronal measurements and perturbations in rat and network modelling, we aim to build a multi-level description of how sensory history is utilised in inferring regularities in temporally extended tasks. In this talk, I will specifically focus on a comparative rat and human model, in combination with neural network models to study how past sensory experiences are utilized to impact working memory and decision making behaviours.

SeminarNeuroscience

Understanding Perceptual Priors with Massive Online Experiments

Nori Jacoby
Max Planck for empirical Aesthetics
Jul 13, 2021

One of the most important questions in psychology and neuroscience is understanding how the outside world maps to internal representations. Classical psychophysics approaches to this problem have a number of limitations: they mostly study low dimensional perpetual spaces, and are constrained in the number and diversity of participants and experiments. As ecologically valid perception is rich, high dimensional, contextual, and culturally dependent, these impediments severely bias our understanding of perceptual representations. Recent technological advances—the emergence of so-called “Virtual Labs”— can significantly contribute toward overcoming these barriers. Here I present a number of specific strategies that my group has developed in order to probe representations across a number of dimensions. 1) Massive online experiments can increase significantly the amount of participants and experiments that can be carried out in a single study, while also significantly diversifying the participant pool. We have developed a platform, PsyNet, that enables “experiments as code,” whereby the orchestration of computer servers, recruiting, compensation of participants, and data management is fully automated and every experiment can be fully replicated with one command line. I will demonstrate how PsyNet allows us to recruit thousands of participants for each study with a large number of control experimental conditions, significantly increasing our understanding of auditory perception. 2) Virtual lab methods also enable us to run experiments that are nearly impossible in a traditional lab setting. I will demonstrate our development of adaptive sampling, a set of behavioural methods that combine machine learning sampling techniques (Monte Carlo Markov Chains) with human interactions and allow us to create high-dimensional maps of perceptual representations with unprecedented resolution. 3) Finally, I will demonstrate how the aforementioned methods can be applied to the study of perceptual priors in both audition and vision, with a focus on our work in cross-cultural research, which studies how perceptual priors are influenced by experience and culture in diverse samples of participants from around the world.

SeminarNeuroscienceRecording

Neural dynamics underlying temporal inference

Devika Narain
Erasmus Medical Centre
Apr 26, 2021

Animals possess the ability to effortlessly and precisely time their actions even though information received from the world is often ambiguous and is inadvertently transformed as it passes through the nervous system. With such uncertainty pervading through our nervous systems, we could expect that much of human and animal behavior relies on inference that incorporates an important additional source of information, prior knowledge of the environment. These concepts have long been studied under the framework of Bayesian inference with substantial corroboration over the last decade that human time perception is consistent with such models. We, however, know little about the neural mechanisms that enable Bayesian signatures to emerge in temporal perception. I will present our work on three facets of this problem, how Bayesian estimates are encoded in neural populations, how these estimates are used to generate time intervals, and how prior knowledge for these tasks is acquired and optimized by neural circuits. We trained monkeys to perform an interval reproduction task and found their behavior to be consistent with Bayesian inference. Using insights from electrophysiology and in silico models, we propose a mechanism by which cortical populations encode Bayesian estimates and utilize them to generate time intervals. Thereafter, I will present a circuit model for how temporal priors can be acquired by cerebellar machinery leading to estimates consistent with Bayesian theory. Based on electrophysiology and anatomy experiments in rodents, I will provide some support for this model. Overall, these findings attempt to bridge insights from normative frameworks of Bayesian inference with potential neural implementations for the acquisition, estimation, and production of timing behaviors.

SeminarNeuroscience

Top-down Modulation in Human Visual Cortex

Mohamed Abdelhack
Washington University in St. Louis
Dec 16, 2020

Human vision flaunts a remarkable ability to recognize objects in the surrounding environment even in the absence of complete visual representation of these objects. This process is done almost intuitively and it was not until scientists had to tackle this problem in computer vision that they noticed its complexity. While current advances in artificial vision systems have made great strides exceeding human level in normal vision tasks, it has yet to achieve a similar robustness level. One cause of this robustness is the extensive connectivity that is not limited to a feedforward hierarchical pathway similar to the current state-of-the-art deep convolutional neural networks but also comprises recurrent and top-down connections. They allow the human brain to enhance the neural representations of degraded images in concordance with meaningful representations stored in memory. The mechanisms by which these different pathways interact are still not understood. In this seminar, studies concerning the effect of recurrent and top-down modulation on the neural representations resulting from viewing blurred images will be presented. Those studies attempted to uncover the role of recurrent and top-down connections in human vision. The results presented challenge the notion of predictive coding as a mechanism for top-down modulation of visual information during natural vision. They show that neural representation enhancement (sharpening) appears to be a more dominant process of different levels of visual hierarchy. They also show that inference in visual recognition is achieved through a Bayesian process between incoming visual information and priors from deeper processing regions in the brain.

ePoster

Learning to combine sensory evidence and contextual priors under ambiguity

COSYNE 2022

ePoster

Learning to combine sensory evidence and contextual priors under ambiguity

COSYNE 2022

ePoster

Neural Circuit Architectural Priors for Motor Control

COSYNE 2022

ePoster

Neural Circuit Architectural Priors for Motor Control

COSYNE 2022

ePoster

Optimists and realists: heterogeneous priors in rats performing hidden state inference

COSYNE 2022

ePoster

Optimists and realists: heterogeneous priors in rats performing hidden state inference

COSYNE 2022

ePoster

Complex computation from developmental priors

Dániel Barabási, Taliesin Beynon, Nicolas Perez-Nievas, Ádám Katona

COSYNE 2023

ePoster

Encoding priors in recurrent neural circuits with dendritic nonlinearities

Benjamin Lyo, Eero Simoncelli, Cristina Savin

COSYNE 2023

ePoster

Learning representations of environmental priors in visual working memory

Tahra Eissa & Zachary Kilpatrick

COSYNE 2023

ePoster

Sensory priors, and choice and outcome history in service of optimal behaviour in noisy environments

Elena Menichini, Victor Pedrosa, Quentin Pajot-Moric, Viktor Plattner, Liang Zhou, Peter Latham, Athena Akrami

COSYNE 2023

ePoster

Neural circuit architectural priors for quadruped locomotion

Nikhil Bhattasali, Venkatesh Pattabiraman, Lerrel Pinto, Grace Lindsay

COSYNE 2025

ePoster

Studying sensory statistics and priors during sound categorisation in head-fixed mice

Quentin Pajot-Moric, Peter Vincent, Ryan Low, Kay Lee, Athena Akrami

COSYNE 2025

ePoster

Perceptual decision-making and short-term priors: Exploring the role of psychosis proneness

Anna-Chiara Schaub, Philipp Sterzer

FENS Forum 2024

ePoster

Seeing what you believe: Neurophysiological mechanisms of flexible integration of priors in visual decisions

Gabriela Iwama, Randolph Helfrich

FENS Forum 2024