A bandit-learning approach to multifidelity approximation
SIAM Journal on Scientific Computing, 2022•SIAM
Multifidelity approximation is an important technique in scientific computation and
simulation. In this paper, we introduce a bandit-learning approach for leveraging data of
varying fidelities to achieve precise estimates of the parameters of interest. Under a linear
model assumption, we formulate a multifidelity approximation as a modified stochastic
bandit and analyze the loss for a class of policies that uniformly explore each model before
exploiting. Utilizing the estimated conditional mean-squared error, we propose a consistent …
simulation. In this paper, we introduce a bandit-learning approach for leveraging data of
varying fidelities to achieve precise estimates of the parameters of interest. Under a linear
model assumption, we formulate a multifidelity approximation as a modified stochastic
bandit and analyze the loss for a class of policies that uniformly explore each model before
exploiting. Utilizing the estimated conditional mean-squared error, we propose a consistent …
Multifidelity approximation is an important technique in scientific computation and simulation. In this paper, we introduce a bandit-learning approach for leveraging data of varying fidelities to achieve precise estimates of the parameters of interest. Under a linear model assumption, we formulate a multifidelity approximation as a modified stochastic bandit and analyze the loss for a class of policies that uniformly explore each model before exploiting. Utilizing the estimated conditional mean-squared error, we propose a consistent algorithm, adaptive explore-then-commit (AETC), and establish a corresponding trajectorywise optimality result. These results are then extended to the case of vector-valued responses, where we demonstrate that the algorithm is efficient without the need to worry about estimating high-dimensional parameters. The main advantage of our approach is that we require neither hierarchical model structure nor a priori knowledge of statistical information (e.g., correlations) about or between models. Instead, the AETC algorithm requires only knowledge of which model is a trusted high-fidelity model, along with (relative) computational cost estimates of querying each model. Numerical experiments are provided at the end to support our theoretical findings.
Society for Industrial and Applied Mathematics