Triplet-based versions of cyclic reduction and incremental Newton compute the principal square root of M-matrices with component-wise numerical stability independent of singularity and condition number.
Componentwise accurate Brownian motion computations using Cyclic Reduction
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abstract
Markov-modulated Brownian motion is a popular tool to model continuous-time phenomena in a stochastic context. The main quantity of interest is the invariant density, which satisfies a differential equation associated with the quadratic matrix polynomial $P(z) = Vz^2-Dz +Q$, where the matrices $V$ and $D$ are diagonal and $Q$ is the transition matrix of a discrete-time Markov chain. Its solution is typically constructed by computing an invariant pair of $P(z)$ associated with its eigenvalues in the left half-plane, or by solving the matrix equation $X^2V-XD+Q=0$. We show that these tasks can be solved using a componentwise accurate algorithm based on Cyclic Reduction, generalizing the recently appeared algorithms for the linear case ($V=0$). We give a proof of the numerical stability of our algorithm in the componentwise sense; the same proof applies to Cyclic Reduction in a more general M-matrix setting which appears in other applications such as the modelling of QBD processes.
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math.NA 1years
2026 1verdicts
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Component-wise accurate computation of the square root of an M-matrix
Triplet-based versions of cyclic reduction and incremental Newton compute the principal square root of M-matrices with component-wise numerical stability independent of singularity and condition number.