Adaptive probabilistic neural coding from deterministic spiking neurons: analysis from first principles
Michael Famulare, Adrienne Fairhall

TL;DR
This paper develops a first-principles mathematical framework linking deterministic neuron models to probabilistic coding models, revealing how nonlinear dynamics enable adaptive computations like contrast gain control.
Contribution
It introduces a novel analytical approach connecting biophysical neuron models with linear-nonlinear coding models, deriving explicit expressions for their relationships.
Findings
Integrate-and-fire models can perform perfect contrast gain control.
Derived asymptotic expressions for linear filters and nonlinear decision functions.
Demonstrated how deterministic dynamics modulate probabilistic coding properties.
Abstract
A neuron transforms its input into output spikes, and this transformation is the basic unit of computation in the nervous system. The spiking response of the neuron to a complex, time-varying input can be predicted from the detailed biophysical properties of the neuron, modeled as a deterministic nonlinear dynamical system. In the tradition of neural coding, however, a neuron or neural system is treated as a black box and statistical techniques are used to identify functional models of its encoding properties. The goal of this work is to connect the mechanistic, biophysical approach to neuronal function to a description in terms of a coding model. Building from preceding work at the single neuron level, we develop from first principles a mathematical theory mapping the relationships between two simple but powerful classes of models: deterministic integrate-and-fire dynamical models and…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neural Networks and Applications
