In Astrophysics, the identification of candidate Globular Clusters through deep, wide-field, single band HST images, is a typical data analytics problem, where methods based on Machine Learning have revealed a high efficiency and reliability, demonstrating the capability to improve the traditional approaches. Here we experimented some variants of the known Neural Gas model, exploring both supervised and unsupervised paradigms of Machine Learning, on the classification of Globular Clusters, extracted from the NGC1399 HST data. Main focus of this work was to use a well-tested playground to scientifically validate such kind of models for further extended experiments in astrophysics and using other standard Machine Learning methods (for instanc...
The numerous strategies for the automated morphological categorization of galaxies, which uses a var...
In this study, we report systematic investigations of the membership of galaxies inside a cluster us...
We give a brief overview of artificial neural networks (ANNs), focusing on Kohonen networks (KNs). T...
In Astrophysics, the identification of candidate Globular Clusters through deep, wide-field, single ...
Within scientific and real life problems, classification is a typical case of extremely complex task...
Within scientific and real life problems, classification is a typical case of extremely complex task...
We present an application of self-adaptive supervised learning classifiers derived from the machine ...
In the last years, Astroinformatics has become a well-defined paradigm for many fields of Astronomy....
Globular clusters (GCs) have been at the heart of many longstanding questions in many sub-fields of ...
In the last years, Astroinformatics has become a well-defined paradigm for many fields of Astronomy....
Extragalactic globular clusters (GCs) are important tracers of galaxy formation and evolution becaus...
Machine learning is a powerful technique, becoming increasingly popular in astrophysics. In this pap...
Extragalactic globular clusters (GCs) are important tracers of galaxy formation and evolution. Obtai...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
We present the results of a proof-of-concept experiment that demonstrates that deep learning can suc...
The numerous strategies for the automated morphological categorization of galaxies, which uses a var...
In this study, we report systematic investigations of the membership of galaxies inside a cluster us...
We give a brief overview of artificial neural networks (ANNs), focusing on Kohonen networks (KNs). T...
In Astrophysics, the identification of candidate Globular Clusters through deep, wide-field, single ...
Within scientific and real life problems, classification is a typical case of extremely complex task...
Within scientific and real life problems, classification is a typical case of extremely complex task...
We present an application of self-adaptive supervised learning classifiers derived from the machine ...
In the last years, Astroinformatics has become a well-defined paradigm for many fields of Astronomy....
Globular clusters (GCs) have been at the heart of many longstanding questions in many sub-fields of ...
In the last years, Astroinformatics has become a well-defined paradigm for many fields of Astronomy....
Extragalactic globular clusters (GCs) are important tracers of galaxy formation and evolution becaus...
Machine learning is a powerful technique, becoming increasingly popular in astrophysics. In this pap...
Extragalactic globular clusters (GCs) are important tracers of galaxy formation and evolution. Obtai...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
We present the results of a proof-of-concept experiment that demonstrates that deep learning can suc...
The numerous strategies for the automated morphological categorization of galaxies, which uses a var...
In this study, we report systematic investigations of the membership of galaxies inside a cluster us...
We give a brief overview of artificial neural networks (ANNs), focusing on Kohonen networks (KNs). T...