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Cosmological Reconstruction From Galaxy Light: Neural Network Based Light-Matter Connection

Authors :
Modi, Chirag
Feng, Yu
Seljak, Uros
Publication Year :
2018

Abstract

We present a method to reconstruct the initial conditions of the universe using observed galaxy positions and luminosities under the assumption that the luminosities can be calibrated with weak lensing to give the mean halo mass. Our method relies on following the gradients of forward model and since the standard way to identify halos is non-differentiable and results in a discrete sample of objects, we propose a framework to model the halo position and mass field starting from the non-linear matter field using Neural Networks. We evaluate the performance of our model with multiple metrics. Our model is more than $95\%$ correlated with the halo-mass fields up to $k\sim 0.7 {\rm h/Mpc}$ and significantly reduces the stochasticity over the Poisson shot noise. We develop a data likelihood model that takes our modeling error and intrinsic scatter in the halo mass-light relation into account and show that a displaced log-normal model is a good approximation to it. We optimize over the corresponding loss function to reconstruct the initial density field and develop an annealing procedure to speed up and improve the convergence. We apply the method to halo number densities of $\bar{n} = 2.5\times 10^{-4} -10^{-3}({\rm h/Mpc})^3$, typical of current and future redshift surveys, and recover a Gaussian initial density field, mapping all the higher order information in the data into the power spectrum. We show that our reconstruction improves over the standard reconstruction. For baryonic acoustic oscillations (BAO) the gains are relatively modest because BAO is dominated by large scales where standard reconstruction suffices. We improve upon it by $\sim 15-20\%$ in terms of error on BAO peak as estimated by Fisher analysis at $z=0$. We expect larger gains will be achieved when applying this method to the broadband linear power spectrum reconstruction on smaller scales.<br />Comment: 33 pages, 15 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1805.02247
Document Type :
Working Paper
Full Text :
https://doi.org/10.1088/1475-7516/2018/10/028