Sequential Quadratic Optimization for Nonlinear Equality Constrained
Stochastic Optimization
- URL: http://arxiv.org/abs/2007.10525v1
- Date: Mon, 20 Jul 2020 23:04:26 GMT
- Title: Sequential Quadratic Optimization for Nonlinear Equality Constrained
Stochastic Optimization
- Authors: Albert Berahas, Frank E. Curtis, Daniel P. Robinson, Baoyu Zhou
- Abstract summary: It is assumed in this setting that it is intractable to compute objective function and derivative values explicitly.
An algorithm is proposed for the deterministic setting that is modeled after a state-of-the-art line-search SQP algorithm.
The results of numerical experiments demonstrate the practical performance of our proposed techniques.
- Score: 10.017195276758454
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sequential quadratic optimization algorithms are proposed for solving smooth
nonlinear optimization problems with equality constraints. The main focus is an
algorithm proposed for the case when the constraint functions are
deterministic, and constraint function and derivative values can be computed
explicitly, but the objective function is stochastic. It is assumed in this
setting that it is intractable to compute objective function and derivative
values explicitly, although one can compute stochastic function and gradient
estimates. As a starting point for this stochastic setting, an algorithm is
proposed for the deterministic setting that is modeled after a state-of-the-art
line-search SQP algorithm, but uses a stepsize selection scheme based on
Lipschitz constants (or adaptively estimated Lipschitz constants) in place of
the line search. This sets the stage for the proposed algorithm for the
stochastic setting, for which it is assumed that line searches would be
intractable. Under reasonable assumptions, convergence (resp.,~convergence in
expectation) from remote starting points is proved for the proposed
deterministic (resp.,~stochastic) algorithm. The results of numerical
experiments demonstrate the practical performance of our proposed techniques.
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