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arxiv: 2209.12057 · v2 · pith:WCRQIO6Jnew · submitted 2022-09-24 · 🧮 math.OC

Shape-Changing Trust-Region Methods Using Multipoint Symmetric Secant Matrices

classification 🧮 math.OC
keywords methodsshape-changingtrust-regionmatricesdensely-initializedmultipointnormssecant
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In this work, we consider methods for large-scale and nonconvex unconstrained optimization. We propose a new trust-region method whose subproblem is defined using a so-called "shape-changing" norm together with densely-initialized multipoint symmetric secant (MSS) matrices to approximate the Hessian. Shape-changing norms and dense initializations have been successfully used in the context of traditional quasi-Newton methods, but have yet to be explored in the case of MSS methods. Numerical results suggest that trust-region methods that use densely-initialized MSS matrices together with shape-changing norms outperform MSS with other trust-region methods.

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