Deep Gaussian Processes for Multi-fidelity Modeling
About
Multi-fidelity methods are prominently used when cheaply-obtained, but possibly biased and noisy, observations must be effectively combined with limited or expensive true data in order to construct reliable models. This arises in both fundamental machine learning procedures such as Bayesian optimization, as well as more practical science and engineering applications. In this paper we develop a novel multi-fidelity model which treats layers of a deep Gaussian process as fidelity levels, and uses a variational inference scheme to propagate uncertainty across them. This allows for capturing nonlinear correlations between fidelities with lower risk of overfitting than existing methods exploiting compositional structure, which are conversely burdened by structural assumptions and constraints. We show that the proposed approach makes substantial improvements in quantifying and propagating uncertainty in multi-fidelity set-ups, which in turn improves their effectiveness in decision making pipelines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Surrogate Modeling | Branin 2D | Normalized RMSE0.67 | 16 | |
| Surrogate Modeling | Park2 4D | Normalized RMSE1.28 | 16 | |
| Surrogate Modeling | Hartmann 3D | Normalized RMSE0.89 | 16 | |
| Surrogate Modeling | Park1 4D | Normalized RMSE2.07 | 16 | |
| Surrogate Modeling | Rastrigin 5D | Normalized RMSE1.9 | 16 | |
| Surrogate Modeling | Levy 7D | Normalized RMSE2.23 | 16 | |
| Surrogate Modeling | Rosenbrock 10D | Normalized RMSE2.06 | 16 | |
| Surrogate Modeling | Ackley 4D | Normalized RMSE1.23 | 16 | |
| Surrogate Modeling | Hartmann 6D | Normalized RMSE1.08 | 16 | |
| Surrogate Modeling | Borehole 8D | Normalized RMSE1.97 | 16 |