Predictive versus Correlational Coarse-Graining in the Brain
ORAL
Abstract
In complex systems with many degrees of freedom, e.g. neural systems, we learn a great deal by studying their coarse-grained, or simplified, representations. Here, we study the effect of adding a cost function to simplification by comparing computation-explicit and computation-agnostic coarse-grainings. We use retinal data, which displays a variety of nonlinear processes associated with prediction, near-optimally. The activity of a group of π neurons is modeled as a binary pattern Οt, where Οti represents the activity of cell π at time π‘ with a 1 if the cell spiked and 0 if not. To study computation downstream of the retina, we coarse-grain π cells into one meta neuron, π(π‘), whose 2 response states depend probabilistically on the original activity Οt, then test how well the meta neuron retains information about future input activity: πΌ(πt; Οt+Ξt) = π»(πt) + π»(Οt+Ξt) β π»(πt, Οt+Ξt), where π» denotes entropy. The benefits of a predictive coarse-graining (PCG) far outweigh the costs: a prediction-agnostic correlational coarse-graining (CCG) that simply aims to reduce redundancy in the data by combining highly correlated neurons can, surprisingly, preserve predictive information in natural scenes, but it is sub-optimal and does not generalize across scenes. In contrast, PCG preserves near-optimal predictive information, and can generalize across natural scenes. While CCG might seem more computationally simple, it may not be as efficient as solving just one generalized optimization problem.
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Presenters
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Sylvia Durian
University of Chicago
Authors
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Sylvia Durian
University of Chicago
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Olivier Marre
Institut de la Vision, Sorbonne Universite, Institut de la Vision, Sorbonne UniversitΓ©, INSERM, Paris, France
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Stephanie E Palmer
University of Chicago