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Ewa M. Bednarczuk Enrico Miglierina Elena Molho 《Set-Valued and Variational Analysis》2011,19(4):569-587
The mountain pass theorem for scalar functionals is a fundamental result of the minimax methods in variational analysis. In this work we extend this theorem to the class of \(\mathcal{C}^{1}\) functions \(f:\mathbb{R}^{n}\rightarrow\mathbb{R}^{m}\), where the image space is ordered by the nonnegative orthant \(\mathbb{R}_{+}^{m}\). Under suitable geometrical assumptions, we prove the existence of a critical point of f and we localize this point as a solution of a minimax problem. We remark that the considered minimax problem consists of an inner vector maximization problem and of an outer set-valued minimization problem. To deal with the outer set-valued problem we use an ordering relation among subsets of \(\mathbb{R}^{m}\) introduced by Kuroiwa. In order to prove our result, we develop an Ekeland-type principle for set-valued maps and we extensively use the notion of vector pseudogradient. 相似文献
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Emanuele Casini Enrico Miglierina Łukasz Piasecki Libor Veselý 《Israel Journal of Mathematics》2016,216(1):355-369
We present a Lindenstrauss space with an extreme point that does not contain a subspace linearly isometric to c. This example disproves a result stated by Zippin in a paper published in 1969 and it shows that some classical characterizations of polyhedral Lindenstrauss spaces, based on Zippin’s result, are false, whereas some others remain unproven; then we provide a correct proof for those characterizations. Finally, we also disprove a characterization of polyhedral Lindenstrauss spaces given by Lazar, in terms of the compact norm-preserving extension of compact operators, and we give an equivalent condition for a Banach space X to satisfy this property. 相似文献
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E. Miglierina 《Rendiconti del Circolo Matematico di Palermo》2001,50(1):153-164
A characterization of weakly efficient, efficient and properly efficient solutions of multiobjective optimization problems
is given in terms of a scalar optimization problem by using a special “distance” function. The concept of the well-posedness
for this special scalar problem is then linked with the properly efficient solutions of the multiobjective problem. 相似文献
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E. Miglierina 《Set-Valued Analysis》2004,12(3):345-356
The present work develops a new approach for studying the dynamic evolution of a vector optimization problem. We introduce
a convenient differential inclusion that rules the dynamics of the optimization problem. Actually we consider a sort of ‘gradient
system’ defined by vector valued functions. The main tool used is a completely new adaptation to the vector problem of the
notion of pseudogradient, which is a well-known concept in the modern critical point theory. Finally we study a special class
of solutions of the above quoted differential inclusion: the slow solutions. 相似文献
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E. Miglierina E. Molho M. Rocca 《Journal of Optimization Theory and Applications》2008,138(3):479-496
In this work, we study the critical points of vector functions from ℝ
n
to ℝ
m
with n≥m, following the definition introduced by Smale in the context of vector optimization. The local monotonicity properties of
a vector function around a critical point which are invariant with respect to local coordinate changes are considered. We
propose a classification of critical points through the introduction of a generalized Morse index for a critical point, consisting
of a triplet of nonnegative integers. The proposed index is based on the sign of an appropriate invariant vector-valued second-order
differential. 相似文献
8.
A class of scalarizations of vector optimization problems is studied in order to characterize weakly efficient, efficient, and properly efficient points of a nonconvex vector problem. A parallelism is established between the different solutions of the scalarized problem and the various efficient frontiers. In particular, properly efficient points correspond to stable solutions with respect to suitable perturbations of the feasible set. 相似文献
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The aim of this paper is the development of an algorithm to find the critical points of a box-constrained multi-objective optimization problem. The proposed algorithm is an interior point method based on suitable directions that play the role of gradient-like directions for the vector objective function. The method does not rely on an “a priori” scalarization and is based on a dynamic system defined by a vector field of descent directions in the considered box. The key tool to define the mentioned vector field is the notion of vector pseudogradient. We prove that the limit points of the solutions of the system satisfy the Karush–Kuhn–Tucker (KKT) first order necessary condition for the box-constrained multi-objective optimization problem. These results allow us to develop an algorithm to solve box-constrained multi-objective optimization problems. Finally, we consider some test problems where we apply the proposed computational method. The numerical experience shows that the algorithm generates an approximation of the local optimal Pareto front representative of all parts of optimal front. 相似文献