Remarks on stochastic automatic adjoint differentiation and financial models calibration
Abstract
In this work, we discuss the Automatic Adjoint Differentiation (AAD) for functions of the form G=12Σ1m (Eyi-Ci)2, which often appear in the calibration of stochastic models. We demonstrate that it allows a perfect SIMDSingle Input Multiple Data parallelization and provide its relative computational cost. In addition we demonstrate that this theoretical result is in concordance with numeric experiments.
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