On synaptic learning rules for spiking neurons - with Friedemann Zenke - #11

Today’s AI is largely based on supervised learning of neural networks using the backpropagation-of-error synaptic learning rule. This learning rule relies on differentiation of continuous activation functions and is thus not directly applicable to spiking neurons. Today’s guest has developed the algorithm SuperSpike to address the problem. He has also recently developed a biologically more plausible learning rule based on self-supervised learning. We talk about both.  

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The podcast focuses on topics in theoretical/computational neuroscience and is primarily aimed at students and researchers in the field.