首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >A FAST SEMIDIRECT LEAST SQUARES ALGORITHM FOR HIERARCHICALLY BLOCK SEPARABLE MATRICES?
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A FAST SEMIDIRECT LEAST SQUARES ALGORITHM FOR HIERARCHICALLY BLOCK SEPARABLE MATRICES?

机译:用于分层分块矩阵的快速最小二乘算法?

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We present a fast algorithm for linear least squares problems governed by hierarchically block separable (HBS) matrices. Such matrices are generally dense but data sparse and can describe many important operators including those derived from asymptotically smooth radial kernels that are not too oscillatory. The algorithm is based on a recursive skeletonization procedure that exposes this sparsity and solves the dense least squares problem as a larger, equality-constrained, sparse one. It relies on a sparse QR factorization coupled with iterative weighted least squares methods. In essence, our scheme consists of a direct component, comprised of matrix compression and factorization, followed by an iterative component to enforce certain equality constraints. At most two iterations are typically required for problems that are not too ill-conditioned. For an M×N HBS matrix with M ≥ N having bounded off-diagonal block rank, the algorithm has optimal O(M + N) complexity. If the rank increases with the spatial dimension as is common for operators that are singular at the origin, then this becomes O(M + N) in one dimension, O(M + N~(3/2)) in two dimensions, and O(M + N~2) in three dimensions. We illustrate the performance of the method on both overdetermined and underdetermined systems in a variety of settings, with an emphasis on radial basis function approximation and efficient updating and downdating.
机译:我们提出了一种线性最小二乘问题的快速算法,该问题由分层块可分离(HBS)矩阵控制。这样的矩阵通常是密集的,但是数据稀疏,并且可以描述许多重要的算子,包括那些从不太平滑的渐近光滑径向核派生的算子。该算法基于递归骨架化过程,该过程暴露了这种稀疏性,并解决了较大的,均等约束的,稀疏的最小二乘问题。它依赖于稀疏QR分解和迭代加权最小二乘法。从本质上讲,我们的方案由直接组成部分组成,包括矩阵压缩和分解,然后再加上迭代组成部分以实施某些相等约束。对于病情不太严重的问题,通常最多需要进行两次迭代。对于M≥N的M×N HBS矩阵,其边界对角错块秩较高,该算法具有最佳的O(M + N)复杂度。如果秩随原点为奇数的运算符所共有的空间维度而增加,则在一维上变为O(M + N),在二维上变为O(M + N〜(3/2)),并且O(M + N〜2)的三个维度。我们说明了该方法在各种设置中在超定和超定系统上的性能,重点是径向基函数逼近以及有效的更新和降级。

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