Bayesian weight learning in surrogate-gradient SNNs smooths the loss landscape and improves negative log-likelihood plus Brier score on Heidelberg Digits and Speech Commands datasets.
Neftci, Hesham Mostafa, and Friedemann Zenke
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Practical Bayesian Inference for Speech SNNs: Uncertainty and Loss-Landscape Smoothing
Bayesian weight learning in surrogate-gradient SNNs smooths the loss landscape and improves negative log-likelihood plus Brier score on Heidelberg Digits and Speech Commands datasets.