AI RESEARCH
Natural gradient descent with momentum
arXiv CS.AI
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ArXi:2604.15554v1 Announce Type: cross We consider the problem of approximating a function by an element of a nonlinear manifold which admits a differentiable parametrization, typical examples being neural networks with differentiable activation functions or tensor networks. Natural gradient descent (NGD) for the optimization of a loss function can be seen as a preconditioned gradient descent where updates in the parameter space are driven by a functional perspective.