On approximate optimality conditions for robust multi-objective convex optimization problems
收藏DataCite Commons2023-07-27 更新2024-07-29 收录
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In this paper, we are interested in the study of approximate optimality conditions for weakly <i>ϵ</i>-efficient solutions to robust multi-objective optimization problems ((RMOP) for short) in view of its associated <i>minimax optimization problem</i> (MMOP). To this end, we first establish the relationship between a weakly <i>ϵ</i>-efficient solution to the problem (RMOP) and an <i>α</i>-solution to the problem (MMOP), where ϵ=(ϵ1,…,ϵp)∈R+p∖{0} and α=maxj=1,…,p{ϵj}. Then, we explore the representation of the so-called <i>β</i>-normal set (where β≥ 0 is a given parameter) to a closed convex set at some reference point by two methods. At last, by employing the <i>α</i>-subdifferential of the max-function and the obtained representation of the <i>β</i>-normal set, we establish an approximate necessary optimality condition for the problem (RMOP). Moreover, we also give an example to illustrate our results.
提供机构:
Taylor & Francis
创建时间:
2022-03-12



