Abstract

Although galaxies are found to follow a tight relation between their star formation rate and stellar mass, they are expected to exhibit complex star formation histories (SFH) with short-term fluctuations. The goal of this pilot study is to present a method that identifies galaxies that undergo strong variation in star formation activity in the last ten to some hundred million years. In other words, the proposed method determines whether a variation in the last few hundred million years of the SFH is needed to properly model the spectral energy distribution (SED) rather than a smooth normal SFH. To do so, we analyzed a sample of COSMOS galaxies with 0.5 < z < 1 and log M* > 8.5 using high signal-to-noise ratio broadband photometry. We applied approximate Bayesian computation, a custom statistical method for performing model choice, which is associated with machine-learning algorithms to provide the probability that a flexible SFH is preferred based on the observed flux density ratios of galaxies. We present the method and test it on a sample of simulated SEDs. The input information fed to the algorithm is a set of broadband UV to NIR (rest-frame) flux ratios for each galaxy. The choice of using colors is made to remove any difficulty linked to normalization when classification algorithms are used. The method has an error rate of 21% in recovering the correct SFH and is sensitive to SFR variations larger than 1 dex. A more traditional SED-fitting method using CIGALE is tested to achieve the same goal, based on fit comparisons through the Bayesian information criterion, but the best error rate we obtained is higher, 28%. We applied our new method to the COSMOS galaxies sample. The stellar mass distribution of galaxies with a strong to decisive evidence against the smooth delayed-τ SFH peaks at lower M* than for galaxies where the smooth delayed-τ SFH is preferred. We discuss the fact that this result does not come from any bias due to our training. Finally, we argue that flexible SFHs are needed to be able to cover the largest possible SFR-M* parameter space.

Highlights

  • The tight relation linking the star formation rate (SFR) and stellar mass of star-forming galaxies, the so-called main sequence (MS), opened a new window in our understanding of galaxy evolution (Elbaz et al 2007; Noeske et al 2007)

  • We find that the error rate of CIGALE, in terms of identifying spectral energy distribution (SED) built with a delayed-τ + flex star formation histories (SFH), is 32.5%

  • We proposed to use a custom statistical method using a machine-learning algorithm, the approximate Bayesian computation, to determine the best-suited SFH to be used to measure the physical properties of a subsample of COSMOS galaxies

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Summary

Introduction

The tight relation linking the star formation rate (SFR) and stellar mass of star-forming galaxies, the so-called main sequence (MS), opened a new window in our understanding of galaxy evolution (Elbaz et al 2007; Noeske et al 2007). To go a step further, Ciesla et al (2018) have blindly applied the method on the GOODSSouth sample to identify sources that underwent a recent and drastic decrease in their SF activity They compared the quality of the results from SED fitting using two different SFHs and obtained a sample of galaxies where a modeled recent and strong decrease in SFR produced significantly better fits of the broadband photometry. The limited number of sources identified in the study of Ciesla et al (2018; 102 out of 6680) was due to their choice to be conservative in their approach and find a clean sample of sources that underwent a rapid quenching of star formation They imposed that the instantaneous decrease of SFR was more than 80% and that the BIC difference was larger than 10. To go beyond these drawbacks and improve the method of Ciesla et al (2018), we consider in the present pilot study a statistical approach, the ABC, combined with a classification algorithm to improve the accuracy and efficiency of their method

Sample
Statistical approach
Statistical modeling
12 Rejected sources 11
Bayesian model choice
ABC method
Building synthetic photometric data
Application to synthetic photometric data
Method Logistic regression
Importance of particular flux ratios
Comparison with SED fitting methods based on the BIC
BIC th6reshold 8
Application on COSMOS data
Findings
Conclusions
Full Text
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