Uncertainty-aware and Data-efficient Cosmological Emulation using Gaussian Processes and PCA
Abstract
Bayesian parameter inference is one of the key elements for model selection in cosmological research. However, the available inference tools require a large number of calls to simulation codes which can lead to high and sometimes even infeasible computational costs. In this work we propose a new way of emulating simulation codes for Bayesian parameter inference. In particular, this novel approach emphasizes the uncertainty-awareness of the emulator, which allows to state the emulation accuracy and ensures reliable performance. With a focus on data efficiency, we implement an active learning algorithm based on a combination of Gaussian Processes and Principal Component Analysis. We find that for an MCMC analysis of Planck and BAO data on the model (6 model and 21 nuisance parameters) we can reduce the number of simulation calls by a factor of 500 and save about 96\% of the computational costs.
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