Project Details
Projekt Print View

Enabling Bayesian uncertainty quantification for multiscale systems and network models via mutual likelihood-informed dimension reduction (A06+)

Subject Area Mathematics
Term from 2017 to 2018
Project identifier Deutsche Forschungsgemeinschaft (DFG) - Project number 235221301
 
Monte Carlo methods are the computational workhorse of statistical inference as applied to inverse problems throughout the physical sciences, but can become prohibitively costly when inferring high-dimensional or coupled parameters. This is the setting of many state or parameter inference problems associated to multiscale systems of interest to SFB 1114, such as precipitation and hurricane dynamics. We propose to use a combination of strategies drawn from established traditions such as multilevel and adaptive Monte Carlo, and novel contributions such as likelihood-informed active subspace dimension reduction and transfer operator stacking, to reduce the effective computational dimension, thereby accelerating convergence and reducing computational cost, while also studying and controlling the impact of the approximation errors incurred.
DFG Programme Collaborative Research Centres
Applicant Institution Freie Universität Berlin
 
 

Additional Information

Textvergrößerung und Kontrastanpassung