The FEAST eigensolver is extended to the computation of the singular triplets of a large matrix $A$ with the singular values in a given interval. The resulting FEAST SVDsolver is subspace iteration applied to an approximate spectral projector of $A^TA$ corresponding to the desired singular values in a given interval, and constructs approximate left and right singular subspaces corresponding to the desired singular values, onto which $A$ is projected to obtain Ritz approximations. Differently from a commonly used contour integral-based FEAST solver, we propose a robust alternative that constructs approximate spectral projectors by using the Chebyshev--Jackson polynomial series, which are symmetric positive semi-definite with the eigenvalues in $[0,1]$. We prove the pointwise convergence of this series and give compact estimates for pointwise errors of it and the step function that corresponds to the exact spectral projector. We present error bounds for the approximate spectral projector and reliable estimates for the number of desired singular triplets, establish numerous convergence results on the resulting FEAST SVDsolver, and propose practical selection strategies for determining the series degree and for reliably determining the subspace dimension. The solver and results on it are directly applicable or adaptable to the real symmetric and complex Hermitian eigenvalue problem. Numerical experiments illustrate that our FEAST SVDsolver is at least competitive with and is much more efficient than the contour integral-based FEAST SVDsolver when the desired singular values are extreme and interior ones, respectively, and it is also more robust than the latter.
翻译:Fleast egensoolver 将Fleast SVDsolver 扩展为用于计算一个大矩阵的奇特三重值($A ), 其值在给定间隔内。 Fleast SVDsolver 是用于大约光谱投影仪的亚空间, 与给定间隔内想要的奇特值相对应, 并构造大约左方和右方的奇特小空间, 其值预计为美元, 以获得 Ritz 近似值。 不同于一个常用的具有超强整体基础的FTERTS 解答器, 我们提出一个强有力的替代方案, 通过使用 Chebyshev- Jackson 聚光谱投影系列来构建近似光谱投影投影仪, 其对准光谱投影投影仪的近似正反偏移值为正正正反半反偏振半反偏移值, 其最终的STRIVSVS- 度和直观性结果选择的精确度, 度和直径直径直径定位为STRIVSVS-D的精确度, 和直径选择的精确度, 和直判分解度是, 和直判分级的精确度是, 。