Insights into the dependence of galaxy properties on the environment with explainable machine learning models
Shun-ya S. Uchida, Suchetha Cooray, Atsushi J. Nishizawa, Tsutomu T. Takeuchi, and Peter Behroozi

TL;DR
This study uses explainable neural networks to quantify how galaxy properties depend on their environment, revealing hierarchical and galaxy-type specific environmental influences based on data from IllustrisTNG300.
Contribution
It introduces an interpretable machine learning framework that models galaxy-environment interactions and quantifies the environmental impact on different galaxy types and masses.
Findings
Nearest neighbor dominates stellar mass prediction accuracy.
Star formation rate benefits from up to third-nearest neighbor information.
Environmental influence is hierarchical and varies with galaxy type and mass.
Abstract
Galaxies reside within dark matter halos, but their properties are influenced not only by their halo properties but also by the surrounding environment. We construct an interpretable neural network framework to characterize the surrounding environment of galaxies and investigate the extent to which their properties are affected by neighboring galaxies in IllustrisTNG300 data (). Our models predict galaxy properties (stellar mass and star formation rate) given dark matter subhalo properties of both host subhalo and of surrounding galaxies, which serve as an explainable, flexible galaxy-halo connection model. We find that prediction accuracy peaks when incorporating only the nearest neighboring galaxy for stellar mass prediction, while star formation rate prediction benefits from information from up to the third-nearest neighbor. We determine that environmental influence follows a…
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