TY - JOUR
T1 - Calibration of semi-analytic models of galaxy formation using particle swarm optimization
AU - Ruiz, Andrés N.
AU - Cora, Sofía A.
AU - Padilla, Nelson D.
AU - Domínguez, Mariano J.
AU - Vega-Martínez, Cristian A.
AU - Tecce, Tomás E.
AU - Orsi, Álvaro
AU - Yaryura, Yamila
AU - Lambas, Diego García
AU - Gargiulo, Ignacio D.
AU - Arancibia, Alejandra M.Muñoz
N1 - Publisher Copyright:
© 2015. The American Astronomical Society. All rights reserved.
PY - 2015/3/10
Y1 - 2015/3/10
N2 - We present a fast and accurate method to select an optimal set of parameters in semi-analytic models of galaxy formation and evolution (SAMs). Our approach compares the results of a model against a set of observables applying a stochastic technique called Particle Swarm Optimization (PSO), a self-learning algorithm for localizing regions of maximum likelihood in multidimensional spaces that outperforms traditional sampling methods in terms of computational cost. We apply the PSO technique to the SAG semi-analytic model combined with merger trees extracted from a standard Lambda Cold Dark Matter N-body simulation. The calibration is performed using a combination of observed galaxy properties as constraints, including the local stellar mass function and the black hole to bulge mass relation. We test the ability of the PSO algorithm to find the best set of free parameters of the model by comparing the results with those obtained using a MCMC exploration. Both methods find the same maximum likelihood region, however, the PSO method requires one order of magnitude fewer evaluations. This new approach allows a fast estimation of the best-fitting parameter set in multidimensional spaces, providing a practical tool to test the consequences of including other astrophysical processes in SAMs.
AB - We present a fast and accurate method to select an optimal set of parameters in semi-analytic models of galaxy formation and evolution (SAMs). Our approach compares the results of a model against a set of observables applying a stochastic technique called Particle Swarm Optimization (PSO), a self-learning algorithm for localizing regions of maximum likelihood in multidimensional spaces that outperforms traditional sampling methods in terms of computational cost. We apply the PSO technique to the SAG semi-analytic model combined with merger trees extracted from a standard Lambda Cold Dark Matter N-body simulation. The calibration is performed using a combination of observed galaxy properties as constraints, including the local stellar mass function and the black hole to bulge mass relation. We test the ability of the PSO algorithm to find the best set of free parameters of the model by comparing the results with those obtained using a MCMC exploration. Both methods find the same maximum likelihood region, however, the PSO method requires one order of magnitude fewer evaluations. This new approach allows a fast estimation of the best-fitting parameter set in multidimensional spaces, providing a practical tool to test the consequences of including other astrophysical processes in SAMs.
KW - galaxies: evolution
KW - galaxies: formation
KW - methods: numerical
KW - methods: statistical
UR - https://www.scopus.com/pages/publications/84924662583
U2 - 10.1088/0004-637X/801/2/139
DO - 10.1088/0004-637X/801/2/139
M3 - Article
AN - SCOPUS:84924662583
SN - 0004-637X
VL - 801
JO - Astrophysical Journal
JF - Astrophysical Journal
IS - 2
M1 - 139
ER -