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arxiv: 1901.04878 · v1 · pith:OP5OLUEYnew · submitted 2019-01-15 · 📊 stat.ML · cs.LG

Conditional deep surrogate models for stochastic, high-dimensional, and multi-fidelity systems

classification 📊 stat.ML cs.LG
keywords stochastichigh-dimensionalsystemsdeepenablesinferencemodelsmulti-fidelity
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We present a probabilistic deep learning methodology that enables the construction of predictive data-driven surrogates for stochastic systems. Leveraging recent advances in variational inference with implicit distributions, we put forth a statistical inference framework that enables the end-to-end training of surrogate models on paired input-output observations that may be stochastic in nature, originate from different information sources of variable fidelity, or be corrupted by complex noise processes. The resulting surrogates can accommodate high-dimensional inputs and outputs and are able to return predictions with quantified uncertainty. The effectiveness our approach is demonstrated through a series of canonical studies, including the regression of noisy data, multi-fidelity modeling of stochastic processes, and uncertainty propagation in high-dimensional dynamical systems.

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