We present results that span three interconnected domains. Initially, our analysis is centred on Backward Stochastic Differential Equations (BSDEs) featuring time-delayed generators. Subsequently, we direct our interest towards Mean Field Games (MFGs) incorporating absorption aspects, with a focus on the corresponding Master Equation within a confined domain under the imposition of Dirichlet boundary conditions. The investigation culminates in exploring pertinent Machine Learning methodologies applied to financial and economic decision-making processes.
SDEs and MFGs towards Machine Learning applications / Garbelli, Matteo. - (2023 Dec 04), pp. 1-203. [10.15168/11572_398234]
SDEs and MFGs towards Machine Learning applications
Garbelli, Matteo
2023-12-04
Abstract
We present results that span three interconnected domains. Initially, our analysis is centred on Backward Stochastic Differential Equations (BSDEs) featuring time-delayed generators. Subsequently, we direct our interest towards Mean Field Games (MFGs) incorporating absorption aspects, with a focus on the corresponding Master Equation within a confined domain under the imposition of Dirichlet boundary conditions. The investigation culminates in exploring pertinent Machine Learning methodologies applied to financial and economic decision-making processes.File | Dimensione | Formato | |
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Garbelli_thesis_final.pdf
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Descrizione: Garbelli phd thesis
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Tesi di dottorato (Doctoral Thesis)
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