Scalable Nonlinear Programming Via Exact Differentiable Penalty Functions and Trust-Region Newton Methods
We present an approach for nonlinear programming (NLP) based on the direct minimization of an exact dierentiable penalty function using trust-region Newton techniques. As opposed to existing algorithmic approaches to NLP, the approach provides all the features required for scalability: it can eciently detect and exploit directions of negative curvature, it is superlinearly convergent, and … Read more