Polynomial expansion of the star formation history in galaxies
D. Jim\'enez-L\'opez, P. Corcho-Caballero, S. Zamora, Y. Ascasibar

TL;DR
This paper introduces a polynomial expansion method for inferring galaxy star formation histories that balances flexibility and computational efficiency, showing promising results on synthetic and simulated data.
Contribution
It proposes a novel polynomial basis approach to reconstruct galaxy star formation histories, combining advantages of parametric and non-parametric methods.
Findings
Achieves ~10% accuracy in luminosity reproduction
Reconstructs total stellar mass and star formation rate effectively
Struggles with rapid variations and early universe peaks
Abstract
Context. There are typically two different approaches to inferring the mass formation history (MFH) of a given galaxy from its luminosity in different bands. Non-parametric methods are known for their flexibility and accuracy, while parametric models are more computationally efficient. Aims. In this work we propose an alternative, based on a polynomial expansion around the present time, that combines the advantages of both techniques. Methods. In our approach, the MFH is decomposed through an orthonormal basis of N polynomials in lookback time. To test the proposed framework, synthetic observations are generated from models based on common analytical approximations (exponential, delayed-, and Gaussian star formation histories), as well as cosmological simulations for the Illustris-TNG suite. A normalized distance is used to measure the quality of the fit, and the input MFH is…
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