Insights into the origin of halo mass profiles from machine learning
Luisa Lucie-Smith, Susmita Adhikari, Risa H. Wechsler

TL;DR
This paper uses interpretable machine learning to uncover how initial density conditions and assembly history influence the mass profiles of dark matter haloes, revealing key scales and timescales involved.
Contribution
It introduces a machine-learning framework that identifies the main initial conditions and assembly timescales affecting halo mass profiles, providing physical insights.
Findings
Inner profile retains memory of initial conditions
Adding assembly history improves profile predictions
Two primary scales in initial conditions impact halo profiles
Abstract
The mass distribution of dark matter haloes is the result of the hierarchical growth of initial density perturbations through mass accretion and mergers. We use an interpretable machine-learning framework to provide physical insights into the origin of the spherically-averaged mass profile of dark matter haloes. We train a gradient-boosted-trees algorithm to predict the final mass profiles of cluster-sized haloes, and measure the importance of the different inputs provided to the algorithm. We find two primary scales in the initial conditions (ICs) that impact the final mass profile: the density at approximately the scale of the haloes' Lagrangian patch () and that in the large-scale environment (). The model also identifies three primary time-scales in the halo assembly history that affect the final profile: (i) the formation time of the…
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