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HIGH-INDEX OPTIMIZATION-BASED SHRINKING DIMER METHOD FOR FINDING HIGH-INDEX SADDLE POINTS

机译:基于高指标优化的缩小二聚体方法,用于查找高索引鞍点

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摘要

We present a high-index optimization-based shrinking dimer (HiOSD) method to compute index-k saddle points as a generalization of the optimization-based shrinking dimer method for index-1 saddle points [L. Zhang, Q. Du, and Z. Zheng, SIAM T. Sci. Comput., 38 (2016), pp. A528-A544]. We first formulate a minimax problem for an index-k saddle point that is a local maximum on a k-dimensional manifold and a local minimum on its orthogonal complement. The k-dimensional maximal subspace is spanned by the k eigenvectors corresponding to the smallest k eigenvalues of the Hessian, which can be constructed by the simultaneous Rayleigh-quotient minimization technique or the locally optimal block preconditioned conjugate gradient method. Under the minimax framework, we implement the Barzilai-Borwein gradient method to speed up the convergence. We demonstrate the efficiency of the HiOSD method for computing high-index saddle points by applying finite-dimensional examples and semilinear elliptic problems.
机译:我们介绍了一种基于高索赔优化的收缩二聚体(HIOSD)方法,以计算INDEX-K鞍点作为索引-1鞍点的优化收缩二聚体方法的概括[L.张,Q. du,Z. Zheng,Siam T. SCI。计算。,38(2016),PP。A528-A544]。我们首先为索引-K骑马点制定最小的问题,该索引-K骑马点是k维歧管上的局部最大值和其正交补充的局部最小值。 K维最大子空间由对应于Hessian的最小k特征值的k特征向量进行跨越,其可以通过同时的瑞利商最小化技术或局部最佳的块预先说明的共轭梯度方法构成。在最低限度框架下,我们实施了Barzilai-Borwein梯度方法,以加速收敛。我们通过应用有限尺寸示例和半线性椭圆问题来展示用于计算高指标鞍点的HIOSD方法的效率。

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