Predictive uncertainty on improved astrophysics recovery from multifield cosmology
Abstract
We investigate how the constraints on cosmological and astrophysical parameters ( m, σ8, A SN1, A SN2) vary when exploiting information from multiple fields in cosmology. We make use of a convolutional neural network to retrieve the salient features from different combinations of field maps from IllustrisTNG in the CAMELS project. The fields considered are neutral hydrogen (HI), gas density (Mgas), magnetic fields (B) and gas metallicity (Z). We estimate the predictive uncertainty on the predictions of our model by using Monte Carlo dropout, a Bayesian approximation. Results show that overall, the performance of the model improves on all parameters as the number of channels of its input is increased. As compared to previous works, our model is able to predict the astrophysical parameters with up to 5\% higher in accuracy. In the best setup which includes all fields (four channel input, Mgas-HI-B-Z) the model achieves R2 > 0.96 on all parameters. Similarly, we find that the total uncertainty, which is dominated by the aleatoric uncertainty, decreases as more fields are used to train the model in general. The uncertainties obtained by dropout variational inference are overestimated on all parameters in our case, in that the predictive uncertainty is much larger than the actual squared error. After calibration, which consists of a simple σ scaling method, the average deviation of the total uncertainty from the actual error goes down to 25\% at most (on A SN1).
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