A Primer on Stochastic Differential Geometry for Signal Processing
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🧮 math.HO
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differentialgeometryprocessesstochasticcontinuous-timeintroducingprimerapproach
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This primer explains how continuous-time stochastic processes (precisely, Brownian motion and other Ito diffusions) can be defined and studied on manifolds. No knowledge is assumed of either differential geometry or continuous-time processes. The arguably dry approach is avoided of first introducing differential geometry and only then introducing stochastic processes; both areas are motivated and developed jointly.
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