Identifying Learning Rules From Neural Network Observables
–Neural Information Processing Systems
The brain modifies its synaptic strengths during learning in order to better adapt to its environment. However, the underlying plasticity rules that govern learning are unknown. Many proposals have been suggested, including Hebbian mechanisms, explicit error backpropagation, and a variety of alternatives. It is an open question as to what specific experimental measurements would need to be made to determine whether any given learning rule is operative in a real biological system. In this work, we take a virtual experimental approach to this problem.
Neural Information Processing Systems
Dec-23-2025, 19:48:39 GMT
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