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Douglas-Rachford splitting for nonconvex optimization with application to nonconvex feasibility problems

机译:Douglas-Rachford分裂用于非凸优化及其在非凸可行性问题中的应用

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We adapt the Douglas-Rachford (DR) splitting method to solve nonconvex feasibility problems by studying this method for a class of nonconvex optimization problem. While the convergence properties of the method for convex problems have been well studied, far less is known in the nonconvex setting. In this paper, for the direct adaptation of the method to minimize the sum of a proper closed function g and a smooth function f with a Lipschitz continuous gradient, we show that if the step-size parameter is smaller than a computable threshold and the sequence generated has a cluster point, then it gives a stationary point of the optimization problem. Convergence of the whole sequence and a local convergence rate are also established under the additional assumption that f and g are semi-algebraic. We also give simple sufficient conditions guaranteeing the boundedness of the sequence generated. We then apply our nonconvex DR splitting method to finding a point in the intersection of a closed convex set C and a general closed set D by minimizing the squared distance to C subject to D. We show that if either set is bounded and the step-size parameter is smaller than a computable threshold, then the sequence generated from the DR splitting method is actually bounded. Consequently, the sequence generated will have cluster points that are stationary for an optimization problem, and the whole sequence is convergent under an additional assumption that C and D are semi-algebraic. We achieve these results based on a new merit function constructed particularly for the DR splitting method. Our preliminary numerical results indicate that our DR splitting method usually outperforms the alternating projection method in finding a sparse solution of a linear system, in terms of both the solution quality and the number of iterations taken.
机译:通过对一类非凸优化问题进行研究,我们将Douglas-Rachford(DR)分裂方法用于解决非凸可行性问题。尽管已经很好地研究了凸问题方法的收敛性质,但在非凸背景下知之甚少。在本文中,为使方法的直接适应性最小化具有Lipschitz连续梯度的合适的闭合函数g和光滑函数f之和,我们证明了如果步长参数小于可计算阈值,则序列生成的具有聚类点,然后给出优化问题的固定点。在f和g为半代数的附加假设下,还建立了整个序列的收敛性和局部收敛率。我们还给出了简单的充分条件,以保证所生成序列的有界性。然后,我们将非凸DR分裂方法应用于最小凸集C与普通闭合集D的交点上的点,方法是最小化D对C的平方距离。如果size参数小于可计算的阈值,则从DR拆分方法生成的序列实际上是有界的。因此,对于优化问题,生成的序列将具有固定的聚类点,并且在C和D是半代数的附加假设下,整个序列是收敛的。我们基于专门为DR拆分方法构造的新的价值函数获得这些结果。初步的数值结果表明,在求解线性系统的稀疏解时,就解质量和迭代次数而言,DR分解方法通常优于交替投影方法。

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