Inferring Inference
Rajkumar Vasudeva Raju, Zhe Li, Scott Linderman, Xaq Pitkow

TL;DR
This paper introduces a mathematical framework that infers canonical distributed computations in neural activity, linking normative models of brain function with algorithmic message-passing algorithms to interpret large-scale neural data.
Contribution
It develops a novel method combining normative and algorithmic theories to identify canonical computations from neural activity patterns, advancing understanding of distributed neural processing.
Findings
Successfully recovers latent variables and neural representations from simulated data.
Identifies message-functions that define the brain's internal inference algorithm.
Provides guidelines for experimental design to extract canonical computations.
Abstract
Patterns of microcircuitry suggest that the brain has an array of repeated canonical computational units. Yet neural representations are distributed, so the relevant computations may only be related indirectly to single-neuron transformations. It thus remains an open challenge how to define canonical distributed computations. We integrate normative and algorithmic theories of neural computation into a mathematical framework for inferring canonical distributed computations from large-scale neural activity patterns. At the normative level, we hypothesize that the brain creates a structured internal model of its environment, positing latent causes that explain its sensory inputs, and uses those sensory inputs to infer the latent causes. At the algorithmic level, we propose that this inference process is a nonlinear message-passing algorithm on a graph-structured model of the world. Given a…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Advanced Memory and Neural Computing
