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Recurrent Circuits

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recurrent circuits

Discover seminars, jobs, and research tagged with recurrent circuits across World Wide.
6 curated items3 Seminars3 ePosters
Updated almost 3 years ago
6 items · recurrent circuits
6 results
SeminarNeuroscienceRecording

Convex neural codes in recurrent networks and sensory systems

Vladimir Itskov
The Pennsylvania State University
Dec 13, 2022

Neural activity in many sensory systems is organized on low-dimensional manifolds by means of convex receptive fields. Neural codes in these areas are constrained by this organization, as not every neural code is compatible with convex receptive fields. The same codes are also constrained by the structure of the underlying neural network. In my talk I will attempt to provide answers to the following natural questions: (i) How do recurrent circuits generate codes that are compatible with the convexity of receptive fields? (ii) How can we utilize the constraints imposed by the convex receptive field to understand the underlying stimulus space. To answer question (i), we describe the combinatorics of the steady states and fixed points of recurrent networks that satisfy the Dale’s law. It turns out the combinatorics of the fixed points are completely determined by two distinct conditions: (a) the connectivity graph of the network and (b) a spectral condition on the synaptic matrix. We give a characterization of exactly which features of connectivity determine the combinatorics of the fixed points. We also find that a generic recurrent network that satisfies Dale's law outputs convex combinatorial codes. To address question (ii), I will describe methods based on ideas from topology and geometry that take advantage of the convex receptive field properties to infer the dimension of (non-linear) neural representations. I will illustrate the first method by inferring basic features of the neural representations in the mouse olfactory bulb.

SeminarNeuroscienceRecording

Cortical-like dynamics in recurrent circuits optimized for sampling-based probabilistic inference

Máté Lengyel
University of Cambridge
Jun 7, 2020

Sensory cortices display a suite of ubiquitous dynamical features, such as ongoing noise variability, transient overshoots, and oscillations, that have so far escaped a common, principled theoretical account. We developed a unifying model for these phenomena by training a recurrent excitatory-inhibitory neural circuit model of a visual cortical hypercolumn to perform sampling-based probabilistic inference. The optimized network displayed several key biological properties, including divisive normalization, as well as stimulus-modulated noise variability, inhibition-dominated transients at stimulus onset, and strong gamma oscillations. These dynamical features had distinct functional roles in speeding up inferences and made predictions that we confirmed in novel analyses of awake monkey recordings. Our results suggest that the basic motifs of cortical dynamics emerge as a consequence of the efficient implementation of the same computational function — fast sampling-based inference — and predict further properties of these motifs that can be tested in future experiments

ePoster

Embryonic layer 5 pyramidal neurons form earliest recurrent circuits with correlated activity

Arjun Bharioke, Martin Munz, Georg Kosche, Verónica Moreno-Juan, Alexandra Brignall, Alexandra Graff-Meyer, Talia Ulmer, Tiago Rodrigues, Simone Picelli, Cameron Cowan, Botond Roska

COSYNE 2023

ePoster

The logic of recurrent circuits in the primary visual cortex

Gregory Handy, Ian Oldenburg, Will Hendricks, Hillel Adesnik, Brent Doiron

COSYNE 2023

ePoster

Recurrent circuits improve neural response prediction and provide insight into cortical circuits

Harold Rockwell, Sicheng Dai, Yimeng Zhang, Stephen Tsou, Ge Huang, Yuanyuan Wei, Tai Sing Lee

COSYNE 2023