Numerical experience with a class of self-scaling quasi-newton algorithms

M. Al-Baali*

*المؤلف المقابل لهذا العمل

نتاج البحث: المساهمة في مجلةArticleمراجعة النظراء

34 اقتباسات (Scopus)

ملخص

Self-scaling quasi-Newton methods for unconstrained optimization depend upon updating the Hessian approximation by a formula which depends on two parameters (say, τ and θ) such that τ = 1, θ = 0, and θ = 1 yield the unscaled Broyden family, the BFGS update, and the DFP update, respectively. In previous work, conditions were obtained on these parameters that imply global and superlinear convergence for self-scaling methods on convex objective functions. This paper discusses the practical performance of several new algorithms designed to satisfy these conditions.

اللغة الأصليةEnglish
الصفحات (من إلى)533-553
عدد الصفحات21
دوريةJournal of Optimization Theory and Applications
مستوى الصوت96
رقم الإصدار3
المعرِّفات الرقمية للأشياء
حالة النشرPublished - مارس 1998
منشور خارجيًانعم

ASJC Scopus subject areas

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