Information-theoretic analyses of neural data to minimize the effect of researchers' assumptions in predictive coding studies
Patricia Wollstadt, Daniel L. Rathbun, W. Martin Usrey and,, Andr\'e Moraes Bastos, Michael Lindner, Viola Priesemann, Michael, Wibral

TL;DR
This paper introduces an information-theoretic framework to analyze neural data, specifically testing predictive coding hypotheses without circular reasoning, and demonstrates its effectiveness on cat retinogeniculate synapse data.
Contribution
It develops a novel local information-theoretic approach to distinguish neural coding strategies, avoiding circular analysis and providing direct data-driven insights.
Findings
Synapse codes for predictable input rather than surprising input.
Synapse preferentially transfers bottom-up sensory information.
Framework can differentiate information transfer sources using partial information decomposition.
Abstract
Studies investigating neural information processing often implicitly ask both, which processing strategy out of several alternatives is used and how this strategy is implemented in neural dynamics. A prime example are studies on predictive coding. These often ask if confirmed predictions about inputs or predictions errors between internal predictions and inputs are passed on in a hierarchical neural system--while at the same time looking for the neural correlates of coding for errors and predictions. If we do not know exactly what a neural system predicts at any given moment, this results in a circular analysis--as has been criticized correctly. To circumvent such circular analysis, we propose to express information processing strategies (such as predictive coding) by local information-theoretic quantities, such that they can be estimated directly from neural data. We demonstrate our…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neural Networks and Applications
