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divisive normalization

Discover seminars, jobs, and research tagged with divisive normalization across World Wide.
8 curated items6 ePosters2 Seminars
Updated over 3 years ago
8 items · divisive normalization
8 results
SeminarNeuroscienceRecording

The balance of excitation and inhibition and a canonical cortical computation

Yashar Ahmadian
Cambridge, UK
Apr 26, 2022

Excitatory and inhibitory (E & I) inputs to cortical neurons remain balanced across different conditions. The balanced network model provides a self-consistent account of this observation: population rates dynamically adjust to yield a state in which all neurons are active at biological levels, with their E & I inputs tightly balanced. But global tight E/I balance predicts population responses with linear stimulus-dependence and does not account for systematic cortical response nonlinearities such as divisive normalization, a canonical brain computation. However, when necessary connectivity conditions for global balance fail, states arise in which only a localized subset of neurons are active and have balanced inputs. We analytically show that in networks of neurons with different stimulus selectivities, the emergence of such localized balance states robustly leads to normalization, including sublinear integration and winner-take-all behavior. An alternative model that exhibits normalization is the Stabilized Supralinear Network (SSN), which predicts a regime of loose, rather than tight, E/I balance. However, an understanding of the causal relationship between E/I balance and normalization in SSN and conditions under which SSN yields significant sublinear integration are lacking. For weak inputs, SSN integrates inputs supralinearly, while for very strong inputs it approaches a regime of tight balance. We show that when this latter regime is globally balanced, SSN cannot exhibit strong normalization for any input strength; thus, in SSN too, significant normalization requires localized balance. In summary, we causally and quantitatively connect a fundamental feature of cortical dynamics with a canonical brain computation. Time allowing I will also cover our work extending a normative theoretical account of normalization which explains it as an example of efficient coding of natural stimuli. We show that when biological noise is accounted for, this theory makes the same prediction as the SSN: a transition to supralinear integration for weak stimuli.

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

Divisive normalization shapes evidence accumulation during dynamic decision-making

COSYNE 2022

ePoster

Relating Divisive Normalization to Modulation of Correlated Variability in Primary Visual Cortex

COSYNE 2022

ePoster

Relating Divisive Normalization to Modulation of Correlated Variability in Primary Visual Cortex

COSYNE 2022

ePoster

Divisive normalization as a mechanism for hierarchical causal inference in motion perception

Boris Penaloza, Sabyasachi Shivkumar, Gabor Lengyel, Linghao Xu, Gregory DeAngelis, Ralf Haefner

COSYNE 2023

ePoster

Learning a divisive normalization model with a denoising objective

Xinyuan Zhao & Eero Simoncelli

COSYNE 2023

ePoster

Divisive normalization underlying efficient inference in a deep generative model account of V1

Domonkos Martos, Josefina Catoni, Ferenc Csikor, Balazs Meszena, Enzo Ferrante, Diego Milone, Gergo Orban, Rodrigo Echeveste

COSYNE 2025