Litcius/Paper detail

Solving block low-rank linear systems by LU factorization is numerically stable

Nicholas J. Higham, Théo Mary

2021IMA Journal of Numerical Analysis13 citationsDOIOpen Access PDF

Abstract

Abstract Block low-rank (BLR) matrices possess a blockwise low-rank property that can be exploited to reduce the complexity of numerical linear algebra algorithms. The impact of these low-rank approximations on the numerical stability of the algorithms in floating-point arithmetic has not previously been analysed. We present rounding error analysis for the solution of a linear system by LU factorization of BLR matrices. Assuming that a stable pivoting scheme is used, we prove backward stability: the relative backward error is bounded by a modest constant times $\varepsilon $, where the low-rank threshold $\varepsilon $ is the parameter controlling the accuracy of the blockwise low-rank approximations. In addition to this key result, our analysis offers three new insights into the numerical behaviour of BLR algorithms. First, we compare the use of a global or local low-rank threshold and find that a global one should be preferred. Second, we show that performing intermediate recompressions during the factorization can significantly reduce its cost without compromising numerical stability. Third, we consider different BLR factorization variants and determine the update–compress–factor variant to be the best. Tests on a wide range of matrices from various real-life applications show that the predictions from the analysis are realized in practice.

Topics & Concepts

FactorizationMathematicsRank (graph theory)Stability (learning theory)Numerical stabilityBounded functionBlock (permutation group theory)RoundingLinear systemLinear algebraNumerical linear algebraNumerical analysisApplied mathematicsAlgorithmCombinatoricsMathematical analysisComputer scienceGeometryMachine learningOperating systemSparse and Compressive Sensing TechniquesMatrix Theory and AlgorithmsNumerical Methods and Algorithms