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 f...
In this thesis, we explore the use of semi-analytic galaxy formation models and related techniques a...
We present the first results from applying the Santa Cruz semi-analytic model (SAM) for galaxy forma...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Facultad de Ciencias, Departam...
We present a fast and accurate method to select an optimal set of parameters in semi-analytic models...
Semi-analytic models (SAMs) are one of the most effective tools for exploring the physics of galaxy ...
We believe that a wide range of physical processes conspire to shape the observed galaxy population ...
We present a statistical exploration of the parameter space of the De Lucia and Blaizot version of t...
We implement a sample-efficient method for rapid and accurate emulation of semi-analytical galaxy fo...
It is believed that a wide range of physical processes conspire to shape the observed galaxy populat...
It is believed that a wide range of physical processes conspire to shape the observed galaxy populat...
We introduce a statistical exploration of the parameter space of the Munich semi-analytic model buil...
We present a comparison of nine galaxy formation models, eight semi-analytical, and one halo occupat...
We apply Monte Carlo Markov Chain (MCMC) methods to large-scale simulations of galaxy formation in a...
We introduce a statistical exploration of the parameter space of the Munich semi-analytic model buil...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
In this thesis, we explore the use of semi-analytic galaxy formation models and related techniques a...
We present the first results from applying the Santa Cruz semi-analytic model (SAM) for galaxy forma...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Facultad de Ciencias, Departam...
We present a fast and accurate method to select an optimal set of parameters in semi-analytic models...
Semi-analytic models (SAMs) are one of the most effective tools for exploring the physics of galaxy ...
We believe that a wide range of physical processes conspire to shape the observed galaxy population ...
We present a statistical exploration of the parameter space of the De Lucia and Blaizot version of t...
We implement a sample-efficient method for rapid and accurate emulation of semi-analytical galaxy fo...
It is believed that a wide range of physical processes conspire to shape the observed galaxy populat...
It is believed that a wide range of physical processes conspire to shape the observed galaxy populat...
We introduce a statistical exploration of the parameter space of the Munich semi-analytic model buil...
We present a comparison of nine galaxy formation models, eight semi-analytical, and one halo occupat...
We apply Monte Carlo Markov Chain (MCMC) methods to large-scale simulations of galaxy formation in a...
We introduce a statistical exploration of the parameter space of the Munich semi-analytic model buil...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
In this thesis, we explore the use of semi-analytic galaxy formation models and related techniques a...
We present the first results from applying the Santa Cruz semi-analytic model (SAM) for galaxy forma...
Tesis doctoral inédita leída en la Universidad Autónoma de Madrid, Facultad de Ciencias, Departam...