Implementing a Bayes Filter in a Neural Circuit: The Case of Unknown Stimulus Dynamics

12/22/2015
by   Sacha Sokoloski, et al.
0

In order to interact intelligently with objects in the world, animals must first transform neural population responses into estimates of the dynamic, unknown stimuli which caused them. The Bayesian solution to this problem is known as a Bayes filter, which applies Bayes' rule to combine population responses with the predictions of an internal model. In this paper we present a method for learning to approximate a Bayes filter when the stimulus dynamics are unknown. To do this we use the inferential properties of probabilistic population codes to compute Bayes' rule, and train a neural network to compute approximate predictions by the method of maximum likelihood. In particular, we perform stochastic gradient descent on the negative log-likelihood with a novel approximation of the gradient. We demonstrate our methods on a finite-state, a linear, and a nonlinear filtering problem, and show how the hidden layer of the neural network develops tuning curves which are consistent with findings in experimental neuroscience.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/29/2020

Bayesian Neural Network via Stochastic Gradient Descent

The goal of bayesian approach used in variational inference is to minimi...
research
11/19/2020

Computation of the Gradient and the Hessian of the Log-likelihood of the State-space Model by the Kalman Filter

The maximum likelihood estimates of an ARMA model can be obtained by the...
research
04/13/2023

Bayes classifier cannot be learned from noisy responses with unknown noise rates

Training a classifier with noisy labels typically requires the learner t...
research
07/09/2020

Online Approximate Bayesian learning

We introduce in this work a new method for online approximate Bayesian l...
research
01/28/2014

Bayesian Properties of Normalized Maximum Likelihood and its Fast Computation

The normalized maximized likelihood (NML) provides the minimax regret so...
research
11/23/2022

Faster Stochastic First-Order Method for Maximum-Likelihood Quantum State Tomography

In maximum-likelihood quantum state tomography, both the sample size and...
research
09/14/2021

Identifying Untrustworthy Samples: Data Filtering for Open-domain Dialogues with Bayesian Optimization

Being able to reply with a related, fluent, and informative response is ...

Please sign up or login with your details

Forgot password? Click here to reset