The multi-dimensional halo assembly bias can be preserved when enhancing halo properties with HALOSCOPE
Sujatha Ramakrishnan, Violeta Gonzalez-Perez, Gabriele Parimbelli, Gustavo Yepes

TL;DR
This paper introduces HALOSCOPE, a machine learning method that enhances unresolved dark matter halo properties in lower-resolution simulations, preserving multi-dimensional assembly bias and improving galaxy clustering predictions.
Contribution
We developed HALOSCOPE, a novel machine learning approach that accurately reconstructs unresolved halo properties and their correlations, maintaining assembly bias in lower-resolution simulations.
Findings
HALOSCOPE recovers multi-dimensional halo assembly bias.
Clustering of model galaxies improves by a factor of three.
Method enhances cosmological tracer accuracy in approximate simulations.
Abstract
Over \% of dark matter haloes in cosmological simulations have unresolved properties. This can hinder the dynamical range of simulations and result in systematic biases when modelling cosmological tracers. We aim to more precisely determine unresolved structural and dynamical halo properties while preserving the correlations with environment and halo assembly bias found in simulations. We have developed HALOSCOPE, a machine learning technique that uses multi-variate conditional probability distribution functions. This method ensures that correlations among various halo properties, as well as their dependence on the local environment, are preserved. In this work, we trained HALOSCOPE with a high-resolution (HR) simulation and used it to better determine the properties (concentration, spin, and two shape parameters) of unresolved dark matter haloes in an eight times lower resolution…
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Taxonomy
TopicsGeological and Geophysical Studies
