A novel approach to optimize the regularization and evaluation of dynamical models using a model selection framework
Mathias Lipka, Jens Thomas

TL;DR
This paper introduces a model selection framework that accounts for model flexibility and optimizes regularization, significantly improving the accuracy of dynamical galaxy models in estimating properties like SMBH mass.
Contribution
It presents a novel approach to evaluate and select dynamical models by incorporating flexibility estimation and regularization optimization, reducing biases in galaxy property inference.
Findings
Improved accuracy in reconstructing galaxy mass, anisotropy, and viewing angle.
Successful application to real galaxy data, estimating inclination within 5 degrees.
Enhanced constraining power of orbit models with the new framework.
Abstract
Orbit superposition models are a non-parametric dynamical modelling technique to determine the mass of a galaxy's central supermassive black hole (SMBH), its stars, or its dark-matter halo. One of the main problems is how to decide which model out of a large pool of trial models based on different assumed mass distributions represents the true structure of an observed galaxy best. We show that the traditional approach to judge models solely by their goodness-of-fit can lead to substantial biases in estimated galaxy properties caused by varying model flexibilities. We demonstrate how the flexibility of the models can be estimated using bootstrap iterations and present a model selection framework that removes these biases by taking the variable flexibility into account in the model evaluation. We extend the model selection approach to optimize the degree of regularisation directly from…
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