High order splitting methods for SDEs satisfying a commutativity condition
James Foster, Goncalo dos Reis, Calum Strange

TL;DR
This paper introduces a novel approach to high order splitting methods for SDEs by replacing the driving signals with piecewise linear paths, leading to improved convergence rates and applicability.
Contribution
The paper presents a new simple framework for developing and analyzing high order splitting methods for a broad class of SDEs, avoiding rough path theory and enabling better convergence.
Findings
Achieved convergence rates of O(h^{3/2}) in experiments.
Proposed several high order splitting methods for SDEs with commutativity.
Outperformed existing schemes in numerical tests.
Abstract
In this paper, we introduce a new simple approach to developing and establishing the convergence of splitting methods for a large class of stochastic differential equations (SDEs), including additive, diagonal and scalar noise types. The central idea is to view the splitting method as a replacement of the driving signal of an SDE, namely Brownian motion and time, with a piecewise linear path that yields a sequence of ODEs which can be discretized to produce a numerical scheme. This new way of understanding splitting methods is inspired by, but does not use, rough path theory. We show that when the driving piecewise linear path matches certain iterated stochastic integrals of Brownian motion, then a high order splitting method can be obtained. We propose a general proof methodology for establishing the strong convergence of these approximations that is akin to the general framework…
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Taxonomy
TopicsStochastic processes and financial applications · Financial Risk and Volatility Modeling · Complex Systems and Time Series Analysis
