A Recursive Skeletonization Factorization Based on Strong Admissibility

نویسندگان

  • Victor Minden
  • Kenneth L. Ho
  • Anil Damle
  • Lexing Ying
چکیده

We introduce the strong recursive skeletonization factorization (RS-S), a new approximate matrix factorization based on recursive skeletonization for solving discretizations of linear integral equations associated with elliptic partial differential equations in two and three dimensions (and other matrices with similar hierarchical rank structure). Unlike previous skeletonizationbased factorizations, RS-S uses a simple modification of skeletonization, strong skeletonization, which compresses only far-field interactions. This leads to an approximate factorization in the form of a product of many block unit-triangular matrices that may be used as a preconditioner or moderateaccuracy direct solver, with dramatically reduced rank growth. We further combine the strong skeletonization procedure with alternating near-field compression to obtain the hybrid recursive skeletonization factorization (RS-WS), a modification of RS-S that exhibits reduced storage cost in many settings. Under suitable rank assumptions both RS-S and RS-WS exhibit linear computational complexity, which we demonstrate with a number of numerical examples.

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A Recursive Skeletonization Factorization Based on Strong Admissibility | Multiscale Modeling & Simulation | Vol. 15, No. 2 | Society for Industrial and Applied Mathematics

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عنوان ژورنال:
  • Multiscale Modeling & Simulation

دوره 15  شماره 

صفحات  -

تاریخ انتشار 2017