2021
DOI: 10.48550/arxiv.2109.11296
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Conditional gradient method for vector optimization

Abstract: In this paper, we propose an extension of the classical Frank-Wolfe method for solving constrained vector optimization problems with respect to a partial order induced by a closed, convex and pointed cone with nonempty interior. In the proposed method, the construction of auxiliary subproblem is based on the well-known oriented distance function. Two types of stepsize strategies including Armijio line search and adaptive stepsize are used. It is shown that every accumulation point of the generated sequences sa… Show more

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“…, the (L, C, e)-smoothness reduces to condition (A) in [31]. If C = R + , the (L, C, e)-smoothness and (µ, C, e)-strong convexity correspond to relative L-smoothness and µ-strong convexity in [21], respectively.…”
Section: Relative Smoothness and Relative Strong Convexitymentioning
confidence: 99%
“…, the (L, C, e)-smoothness reduces to condition (A) in [31]. If C = R + , the (L, C, e)-smoothness and (µ, C, e)-strong convexity correspond to relative L-smoothness and µ-strong convexity in [21], respectively.…”
Section: Relative Smoothness and Relative Strong Convexitymentioning
confidence: 99%