Description |
I will present a neural network method for reconstructing the underlying 3D cosmological density and velocity fields from discrete and incomplete observed galaxy distributions. These reconstructions are a powerful probe of cosmological parameters. One of the main aims of my talk is to demystify neural networks by clarifying their relation to different conventional statistical estimators. After discussing this, I will explicitly compare the performance of our reconstruction method with the traditional Wiener filter and highlight the advantages of the neural network approach, particularly in capturing nonlinear features. I will conclude with a discussion of the impact of neural networks on the future of the field.
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