Bimodular continuous attractor neural networks with static and moving stimuli
Min Yan, Wen-Hao Zhang, He Wang, K. Y. Michael Wong

TL;DR
This paper explores the dynamics of bimodular continuous attractor neural networks, revealing how intermodular interactions influence bump positions, and extends Bayesian models to multisensory integration involving static and moving stimuli.
Contribution
It introduces a detailed analysis of bimodular neural networks with static and moving stimuli, linking neural dynamics to Bayesian multisensory integration.
Findings
Bump positions shift towards or away from inputs depending on excitatory or inhibitory coupling.
Bimodular networks can generate temporally modulated population spikes and momentary spikes.
Bump height is primarily increased by excitatory couplings, with effects on bump displacement.
Abstract
We investigated the dynamical behaviors of bimodular continuous attractor neural networks, each processing a modality of sensory input and interacting with each other. We found that when bumps coexist in both modules, the position of each bump is shifted towards the other input when the intermodular couplings are excitatory and is shifted away when inhibitory. When one intermodular coupling is excitatory while another is moderately inhibitory, temporally modulated population spikes can be generated. On further increase of the inhibitory coupling, momentary spikes will emerge. In the regime of bump coexistence, bump heights are primarily strengthened by excitatory intermodular couplings, but there is a lesser weakening effect due to a bump being displaced from the direct input. When bimodular networks serve as decoders of multisensory integration, we extend the Bayesian framework to show…
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