A Machine Learning Approach to Galaxy-LSS Classification I: Imprints on Halo Merger Trees
Jianan Hui, Miguel A. Aragon-Calvo, Xinping Cui, James M. Flegal

TL;DR
This paper develops a machine learning classifier that uses galaxy properties and merger histories to predict their cosmic environment with high accuracy, revealing environmental imprints in halo features.
Contribution
It introduces a novel machine learning approach that leverages galaxy and merger tree features, including shape and depth, to classify cosmic environments with improved accuracy.
Findings
Galaxy properties can predict environment with 93% accuracy.
Merger history features are strongly linked to cosmic environment.
Enhanced classification accuracy through LU decomposition of feature distance matrix.
Abstract
The cosmic web plays a major role in the formation and evolution of galaxies and defines, to a large extent, their properties. However, the relation between galaxies and environment is still not well understood. Here we present a machine learning approach to study imprints of environmental effects on the mass assembly of haloes. We present a galaxy-LSS machine learning classifier based on galaxy properties sensitive to the environment. We then use the classifier to assess the relevance of each property. Correlations between galaxy properties and their cosmic environment can be used to predict galaxy membership to void/wall or filament/cluster with an accuracy of . Our study unveils environmental information encoded in properties of haloes not normally considered directly dependent on the cosmic environment such as merger history and complexity. Understanding the physical mechanism…
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