The strong convergence of operator-splitting methods for the Langevin dynamics model
We study the strong convergence of some operator-splitting methods for the Langevin dynamics model with additive noise. It will be shown that a direct splitting of deterministic and random terms, including the symmetric splitting methods, only offers strong convergence of order 1. To improve the ord...
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Zusammenfassung: | We study the strong convergence of some operator-splitting methods for the
Langevin dynamics model with additive noise. It will be shown that a direct
splitting of deterministic and random terms, including the symmetric splitting
methods, only offers strong convergence of order 1. To improve the order of
strong convergence, a new class of operator-splitting methods based on Kunita's
solution representation are proposed. We present stochastic algorithms with
strong orders up to 3. Both mathematical analysis and numerical evidence are
provided to verify the desired order of accuracy. |
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DOI: | 10.48550/arxiv.1706.04237 |