Expressive probabilistic sampling in recurrent neural networks

08/22/2023
by   Shirui Chen, et al.
0

In sampling-based Bayesian models of brain function, neural activities are assumed to be samples from probability distributions that the brain uses for probabilistic computation. However, a comprehensive understanding of how mechanistic models of neural dynamics can sample from arbitrary distributions is still lacking. We use tools from functional analysis and stochastic differential equations to explore the minimum architectural requirements for recurrent neural circuits to sample from complex distributions. We first consider the traditional sampling model consisting of a network of neurons whose outputs directly represent the samples (sampler-only network). We argue that synaptic current and firing-rate dynamics in the traditional model have limited capacity to sample from a complex probability distribution. We show that the firing rate dynamics of a recurrent neural circuit with a separate set of output units can sample from an arbitrary probability distribution. We call such circuits reservoir-sampler networks (RSNs). We propose an efficient training procedure based on denoising score matching that finds recurrent and output weights such that the RSN implements Langevin sampling. We empirically demonstrate our model's ability to sample from several complex data distributions using the proposed neural dynamics and discuss its applicability to developing the next generation of sampling-based brain models.

READ FULL TEXT

page 8

page 9

research
04/11/2023

Recurrent Neural Networks as Electrical Networks, a formalization

Since the 1980s, and particularly with the Hopfield model, recurrent neu...
research
10/04/2022

Adaptive Synaptic Failure Enables Sampling from Posterior Predictive Distributions in the Brain

Bayesian interpretations of neural processing require that biological me...
research
10/24/2022

Protocols for classically training quantum generative models on probability distributions

Quantum Generative Modelling (QGM) relies on preparing quantum states an...
research
08/02/2018

Winner-Take-All as Basic Probabilistic Inference Unit of Neuronal Circuits

Experimental observations of neuroscience suggest that the brain is work...
research
01/12/2018

Deep Learning for Sampling from Arbitrary Probability Distributions

This paper proposes a fully connected neural network model to map sample...
research
01/23/2020

Classically Simulating Quantum Circuits with Local Depolarizing Noise

We study the effect of noise on the classical simulatability of quantum ...
research
04/13/2017

Reward-based stochastic self-configuration of neural circuits

Synaptic connections between neurons in the brain are dynamic because of...

Please sign up or login with your details

Forgot password? Click here to reset