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Convergence of a Relaxed Inertial Forward-Backward Algorithm for Structured Monotone Inclusions

机译:用于结构化单调夹杂物的松弛惯性前向后算法的融合

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In a Hilbert space H, we study the convergence properties of a class of relaxed inertial forward-backward algorithms. They aim to solve structured monotone inclusions of the form Ax + Bx (sic) 0 where A : H -> 2(H) is a maximally monotone operator and B : H -> H is a cocoercive operator. We extend to this class of problems the acceleration techniques initially introduced by Nesterov, then developed by Beck and Teboulle in the case of structured convex minimization (FISTA). As an important element of our approach, we develop an inertial and parametric version of the Krasnoselskii-Mann theorem, where joint adjustment of the inertia and relaxation parameters plays a central role. This study comes as a natural extension of the techniques introduced by the authors for the study of relaxed inertial proximal algorithms. An illustration is given to the inertial Nash equilibration of a game combining non-cooperative and cooperative aspects.
机译:在Hilbert Space H中,我们研究了一类轻松的惯性前向后算法的收敛性质。 它们的目的是解决形状轴+ Bx(SiC)0的结构化单调夹杂物,其中A:H - > 2(H)是最大单调的操作员和B:H - > H是一种过程算子。 我们延伸到这类问题,即核心末期最初引入的加速技术,然后由Beck和Teboulle开发,在结构化凸起最小化(FISTA)的情况下。 作为我们方法的重要因素,我们开发了Krasnoselskii-Mann定理的惯性和参数形式,其中惯性和放松参数的联合调整起到了核心作用。 该研究作为作者引入的技术的自然延伸,用于研究松弛的惯性近端算法。 给出了相结合非协作和协作方面的游戏的惯性纳什平衡的图示。

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