AINeutralarXiv – CS AI · Feb 274/107
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From Shallow Bayesian Neural Networks to Gaussian Processes: General Convergence, Identifiability and Scalable Inference
Researchers established a new theoretical framework connecting Bayesian neural networks to Gaussian processes, developing improved convergence results and identifiability properties. They introduced a scalable computational method using Nyström approximation for training and prediction, demonstrating competitive performance on real-world datasets.