A Principle for Global Optimization with Gradients

Müller, Nils

arXiv.org Machine Learning 

This work demonstrates the utility of gradients for the global optimization of certain differentiable functions with many suboptimal local minima. To this end, a principle for generating search directions from non-local quadratic approximants based on gradients of the objective function is analyzed.

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