Abstract
When a neuron is driven beyond its threshold, it spikes. The fact that it does not communicate its continuous membrane potential is usually seen as a computational liability. Here we show that this spiking mechanism allows neurons to produce an unbiased estimate of their causal influence, and a way of approximating gradient descent-based learning. Importantly, neither activity of upstream neurons, which act as confounders, nor downstream non-linearities bias the results. We show how spiking enables neurons to solve causal estimation problems and that local plasticity can approximate gradient descent using spike discontinuity learning.
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CITATION STYLE
Lansdell, B. J., & Kording, K. P. (2023). Neural spiking for causal inference and learning. PLoS Computational Biology, 19(4). https://doi.org/10.1371/journal.pcbi.1011005
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