Steklov regularization and trajectory methods for univariate global optimization

被引:0
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作者
Orhan Arıkan
Regina S. Burachik
C. Yalçın Kaya
机构
[1] Bilkent University,Electrical and Electronics Engineering Department
[2] University of South Australia,School of Information Technology and Mathematical Sciences
来源
关键词
Global optimization; Mean filter; Steklov smoothing; Steklov regularization; Scale–shift invariance; Trajectory methods;
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摘要
We introduce a new regularization technique, using what we refer to as the Steklov regularization function, and apply this technique to devise an algorithm that computes a global minimizer of univariate coercive functions. First, we show that the Steklov regularization convexifies a given univariate coercive function. Then, by using the regularization parameter as the independent variable, a trajectory is constructed on the surface generated by the Steklov function. For monic quartic polynomials, we prove that this trajectory does generate a global minimizer. In the process, we derive some properties of quartic polynomials. Comparisons are made with a previous approach which uses a quadratic regularization function. We carry out numerical experiments to illustrate the working of the new method on polynomials of various degree as well as a non-polynomial function.
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页码:91 / 120
页数:29
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