4.5 Article

Bottlenecks, Modularity, and the Neural Control of Behavior

Journal

FRONTIERS IN BEHAVIORAL NEUROSCIENCE
Volume 16, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fnbeh.2022.835753

Keywords

neural control; modularity; bottlenecks; neural networks; robustness

Funding

  1. Simons Foundation and a Cottrell Scholar Award, a program of the Research Corporation for Science Advancement [25999]

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This study investigates the impact of information bottleneck in neural networks, demonstrating that a modular structure enhances network efficiency and robustness, at the expense of increased state-dependent effects. Despite its simplicity, the model provides insight into the trade-offs faced by nervous systems under information processing constraints and offers predictions for future experiments.
In almost all animals, the transfer of information from the brain to the motor circuitry is facilitated by a relatively small number of neurons, leading to a constraint on the amount of information that can be transmitted. Our knowledge of how animals encode information through this pathway, and the consequences of this encoding, however, is limited. In this study, we use a simple feed-forward neural network to investigate the consequences of having such a bottleneck and identify aspects of the network architecture that enable robust information transfer. We are able to explain some recently observed properties of descending neurons-that they exhibit a modular pattern of connectivity and that their excitation leads to consistent alterations in behavior that are often dependent upon the desired behavioral state of the animal. Our model predicts that in the presence of an information bottleneck, such a modular structure is needed to increase the efficiency of the network and to make it more robust to perturbations. However, it does so at the cost of an increase in state-dependent effects. Despite its simplicity, our model is able to provide intuition for the trade-offs faced by the nervous system in the presence of an information processing constraint and makes predictions for future experiments.

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