Phase transitions in when feedback is useful
Lokesh Boominathan, Xaq Pitkow

TL;DR
This paper develops a theory of neural inference that incorporates costs and noise in both feedforward and feedback pathways, revealing phase transitions in the utility of feedback based on computational constraints and biological architecture.
Contribution
It introduces a novel control-based inference framework accounting for feedback costs and noise, predicting phase transitions in feedback utility under biological constraints.
Findings
Optimal feedback gain depends non-monotonically on system parameters.
Biological constraints like Dale's law influence feedback utility.
Phase transitions determine when feedback improves inference.
Abstract
Sensory observations about the world are invariably ambiguous. Inference about the world's latent variables is thus an important computation for the brain. However, computational constraints limit the performance of these computations. These constraints include energetic costs for neural activity and noise on every channel. Efficient coding is one prominent theory that describes how such limited resources can best be used. In one incarnation, this leads to a theory of predictive coding, where predictions are subtracted from signals, reducing the cost of sending something that is already known. This theory does not, however, account for the costs or noise associated with those predictions. Here we offer a theory that accounts for both feedforward and feedback costs, and noise in all computations. We formulate this inference problem as message-passing on a graph whereby feedback serves as…
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Taxonomy
TopicsNeural dynamics and brain function · Embodied and Extended Cognition · Neuroscience and Music Perception
