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arxiv: 1308.4275 · v2 · pith:QKEUTLDVnew · submitted 2013-08-20 · 💻 cs.NA

Efficient estimation of eigenvalue counts in an interval

classification 💻 cs.NA
keywords intervalnumberstochasticapplicationsapproachesapproximationapproximationscertain
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Estimating the number of eigenvalues located in a given interval of a large sparse Hermitian matrix is an important problem in certain applications and it is a prerequisite of eigensolvers based on a divide-and-conquer paradigm. Often an exact count is not necessary and methods based on stochastic estimates can be utilized to yield rough approximations. This paper examines a number of techniques tailored to this specific task. It reviews standard approaches and explores new ones based on polynomial and rational approximation filtering combined with a stochastic procedure.

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