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arxiv: 1406.2675 · v1 · pith:CFVARTVNnew · submitted 2014-06-10 · 🧮 math.PR · math.DS

Front Propagation in Stochastic Neural Fields: A Rigorous Mathematical Framework

classification 🧮 math.PR math.DS
keywords rigorousstochasticanalysisframeworkfrontmathematicalneuralprocess
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We develop a complete and rigorous mathematical framework for the analysis of stochastic neural field equations under the influence of spatially extended additive noise. By comparing a solution to a fixed deterministic front profile it is possible to realise the difference as strong solution to an $L^2(\mathbb{R})$-valued SDE. A multiscale analysis of this process then allows us to obtain rigorous stability results. Here a new representation formula for stochastic convolutions in the semigroup approach to linear function-valued SDE with adapted random drift is applied. Additionally, we introduce a dynamic phase-adaption process of gradient type.

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