NCAISYJan 3, 2024

The Neuron as a Direct Data-Driven Controller

arXiv:2401.01489v119 citationsh-index: 47
Originality Incremental advance
AI Analysis

This work addresses the challenge of understanding neuronal computation for neuroscience and AI, offering a novel biologically-informed neuron model, though it appears incremental as an extension of existing normative theories.

The study tackled the problem of modeling neuronal function by conceptualizing neurons as optimal feedback controllers, extending normative models beyond prediction, and demonstrated that the Direct Data-Driven Control framework explains various neurophysiological phenomena such as STDP shifts and neuronal filter properties.

In the quest to model neuronal function amidst gaps in physiological data, a promising strategy is to develop a normative theory that interprets neuronal physiology as optimizing a computational objective. This study extends the current normative models, which primarily optimize prediction, by conceptualizing neurons as optimal feedback controllers. We posit that neurons, especially those beyond early sensory areas, act as controllers, steering their environment towards a specific desired state through their output. This environment comprises both synaptically interlinked neurons and external motor sensory feedback loops, enabling neurons to evaluate the effectiveness of their control via synaptic feedback. Utilizing the novel Direct Data-Driven Control (DD-DC) framework, we model neurons as biologically feasible controllers which implicitly identify loop dynamics, infer latent states and optimize control. Our DD-DC neuron model explains various neurophysiological phenomena: the shift from potentiation to depression in Spike-Timing-Dependent Plasticity (STDP) with its asymmetry, the duration and adaptive nature of feedforward and feedback neuronal filters, the imprecision in spike generation under constant stimulation, and the characteristic operational variability and noise in the brain. Our model presents a significant departure from the traditional, feedforward, instant-response McCulloch-Pitts-Rosenblatt neuron, offering a novel and biologically-informed fundamental unit for constructing neural networks.

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