Kylan12/Synthetic-AI-ML-Dataset
Viewer • Updated • 14k • 63 • 1
Weight convergence stability is proven for a class of nonlinear neural architectures under incremental gradient learning algorithms through bounded-input bounded-state stability analysis.
This letter summarizes and proves the concept of bounded-input bounded-state (BIBS) stability for weight convergence of a broad family of in-parameter-linear nonlinear neural architectures as it generally applies to a broad family of incremental gradient learning algorithms. A practical BIBS convergence condition results from the derived proofs for every individual learning point or batches for real-time applications.
No model linking this paper
No Space linking this paper
No Collection including this paper