Mean-field equations, information inequalities and concentration bounds
Lead Research Organisation:
University of Edinburgh
Department Name: Sch of Mathematics
Abstract
The PhD project focuses on the analysis of mean-field equations in its variety of aspects and applications in Finance, Physics and Machine Learning. We develop new results on so-called concentration bounds for stochastic approximations of Euler type for the interacting particle systems used to approximate McKeanVlasov/mean-field equations. We aim at new well-posedness of mean-field type equations in its varying applications. We develop an information-theoretic framework for quantification and mitigation of error in trajectory-based predictions which are obtained from uncertain vector fields generating the underlying stochastic dynamical system on mean-field type. This is motivated by the necessity to improve predictions in multi-scale systems based on simplified, data-driven models. Here, the distance between two probability measures associated with the true dynamics and its approximation is defined via so-called phi-divergences. The goal is to
obtain general information bounds on the uncertainty in estimates of observables based on the approximate dynamics in terms of the phi-divergences. This new framework provides a systematic link between field-based model error and the resulting uncertainty in trajectory-based predictions. We seek to better understand and develop the theory of Wasserstein gradient flows and its generalization to non-dissipative systems. Results include new regularity statements for the associated mean-field equations and their approximating particle systems in association with underlying random dynamical systems.
obtain general information bounds on the uncertainty in estimates of observables based on the approximate dynamics in terms of the phi-divergences. This new framework provides a systematic link between field-based model error and the resulting uncertainty in trajectory-based predictions. We seek to better understand and develop the theory of Wasserstein gradient flows and its generalization to non-dissipative systems. Results include new regularity statements for the associated mean-field equations and their approximating particle systems in association with underlying random dynamical systems.
Organisations
People |
ORCID iD |
Goncalo Dos Reis (Primary Supervisor) | |
Calum Strange (Student) |
Studentship Projects
Project Reference | Relationship | Related To | Start | End | Student Name |
---|---|---|---|---|---|
EP/R513209/1 | 30/09/2018 | 29/09/2023 | |||
2294370 | Studentship | EP/R513209/1 | 31/08/2019 | 29/04/2023 | Calum Strange |