The scatter in the galaxy–halo connection: a machine learning analysis

Author:

Stiskalek Richard1ORCID,Bartlett Deaglan J2ORCID,Desmond Harry234ORCID,Anbajagane Dhayaa56ORCID

Affiliation:

1. Universitäts-Sternwarte, Ludwig-Maximilians-Universität München , Scheinerstr. 1, D-81679 München, Germany

2. Astrophysics, University of Oxford , Denys Wilkinson Building, Keble Road, Oxford OX1 3RH, UK

3. McWilliams Center for Cosmology, Department of Physics, Carnegie Mellon University , 5000 Forbes Ave, Pittsburgh, PA 15213, USA

4. Institute of Cosmology & Gravitation, University of Portsmouth , Dennis Sciama Building, Portsmouth PO1 3FX, UK

5. Department of Astronomy and Astrophysics, University of Chicago , 5640 S. Ellis Ave, Chicago, IL 60637, USA

6. Kavli Institute for Cosmological Physics, University of Chicago , 5640 S. Ellis Ave, Chicago, IL 60637, USA

Abstract

ABSTRACT We apply machine learning (ML), a powerful method for uncovering complex correlations in high-dimensional data, to the galaxy–halo connection of cosmological hydrodynamical simulations. The mapping between galaxy and halo variables is stochastic in the absence of perfect information, but conventional ML models are deterministic and hence cannot capture its intrinsic scatter. To overcome this limitation, we design an ensemble of neural networks with a Gaussian loss function that predict probability distributions, allowing us to model statistical uncertainties in the galaxy–halo connection as well as its best-fitting trends. We extract a number of galaxy and halo variables from the Horizon-AGN and IllustrisTNG100-1 simulations and quantify the extent to which knowledge of some subset of one enables prediction of the other. This allows us to identify the key features of the galaxy–halo connection and investigate the origin of its scatter in various projections. We find that while halo properties beyond mass account for up to 50 per cent of the scatter in the halo-to-stellar mass relation, the prediction of stellar half-mass radius or total gas mass is not substantially improved by adding further halo properties. We also use these results to investigate semi-analytic models for galaxy size in the two simulations, finding that assumptions relating galaxy size to halo size or spin are not successful.

Funder

STFC

Oriel College Oxford

Carnegie Mellon University

National Science Foundation

ERC

European Union

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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