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The Geometry of Information Coding in Correlated Neural Populations

Rava Azeredo da Silveira, Fred Rieke

2021Annual Review of Neuroscience65 citationsDOIOpen Access PDF

Abstract

Neurons in the brain represent information in their collective activity. The fidelity of this neural population code depends on whether and how variability in the response of one neuron is shared with other neurons. Two decades of studies have investigated the influence of these noise correlations on the properties of neural coding. We provide an overview of the theoretical developments on the topic. Using simple, qualitative, and general arguments, we discuss, categorize, and relate the various published results. We emphasize the relevance of the fine structure of noise correlation, and we present a new approach to the issue. Throughout this review, we emphasize a geometrical picture of how noise correlations impact the neural code.

Topics & Concepts

Neural codingFidelityCoding (social sciences)Computer scienceNoise (video)PopulationArtificial neural networkRelevance (law)Artificial intelligenceNeuroscienceNeural activityCorrelationNeuronNeural decodingInformation processingNeural ensemblePattern recognition (psychology)Code (set theory)Neural systemMachine learningBackground noiseEncoding (memory)Statistical physicsCognitive sciencePredictive codingNeural dynamics and brain functionNeural and Behavioral Psychology StudiesFace Recognition and Perception
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