A deep learning approach to halo merger tree construction
Sandra Robles, Jonathan S. G\'omez, Ad\'in Ram\'irez Rivera, Nelson D., Padilla, Diego Dujovne

TL;DR
This paper introduces a GAN-based machine learning method to efficiently generate realistic halo merger trees, capturing key statistical features with less computational effort than traditional N-body simulations.
Contribution
The authors develop a GAN model trained on simulation data to produce accurate halo merger trees, improving the efficiency and scalability of constructing merger histories.
Findings
GAN successfully reproduces statistical features of merger trees
Inclusion of progenitor type and distance improves model accuracy
Model performs well for low- and intermediate-mass haloes
Abstract
A key ingredient for semi-analytic models (SAMs) of galaxy formation is the mass assembly history of haloes, encoded in a tree structure. The most commonly used method to construct halo merger histories is based on the outcomes of high-resolution, computationally intensive N-body simulations. We show that machine learning (ML) techniques, in particular Generative Adversarial Networks (GANs), are a promising new tool to tackle this problem with a modest computational cost and retaining the best features of merger trees from simulations. We train our GAN model with a limited sample of merger trees from the Evolution and Assembly of GaLaxies and their Environments (EAGLE) simulation suite, constructed using two halo finders-tree builder algorithms: SUBFIND-D-TREES and ROCKSTAR-ConsistentTrees. Our GAN model successfully learns to generate well-constructed merger tree structures with high…
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