Accepted versionGalaxy morphology is a fundamental quantity, that is essential not only for the full spectrum of galaxy-evolution studies, but also for a plethora of science in observational cosmology. While a rich literature exists on morphological-classification techniques, the unprecedented data volumes, coupled, in some cases, with the short cadences of forthcoming 'Big-Data' surveys (e.g. from the LSST), present novel challenges for this field. Large data volumes make such datasets intractable for visual inspection (even via massively-distributed platforms like Galaxy Zoo), while short cadences make it difficult to employ techniques like supervised machine-learning, since it may be impractical to repeatedly produce training sets on sho...
Context. Morphology is the most accessible tracer of the physical structure of galaxies, but its int...
Measuring the morphological parameters of galaxies is a key requirement for studying their formation...
We explore unsupervised machine learning for galaxy morphology analyses using a combination of featu...
Galaxy morphology is a fundamental quantity, which is essential not only for the full spectrum of ga...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We can track the physical evolution of massive galaxies over time by characterizing the morphologica...
International audienceWe explore unsupervised machine learning for galaxy morphology analyses using ...
International audienceWe present a morphological catalogue for ∼670 000 galaxies in the Sloan Digita...
Quantifying galaxy morphology is a challenging yet scientifically rewarding task. As the scale of da...
The numerous strategies for the automated morphological categorization of galaxies, which uses a var...
Abstract. Galaxies are systems of dark matter, stars, gas and dust orbiting around a central concent...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
We examine a general framework for visualizing datasets of high (> 2) dimensionality, and demonstrat...
International audienceClassification of galaxies is traditionally associated with their morphologies...
We present the morphological catalogue of galaxies in nearby clusters of the WIde-field Nearby Galax...
Context. Morphology is the most accessible tracer of the physical structure of galaxies, but its int...
Measuring the morphological parameters of galaxies is a key requirement for studying their formation...
We explore unsupervised machine learning for galaxy morphology analyses using a combination of featu...
Galaxy morphology is a fundamental quantity, which is essential not only for the full spectrum of ga...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We can track the physical evolution of massive galaxies over time by characterizing the morphologica...
International audienceWe explore unsupervised machine learning for galaxy morphology analyses using ...
International audienceWe present a morphological catalogue for ∼670 000 galaxies in the Sloan Digita...
Quantifying galaxy morphology is a challenging yet scientifically rewarding task. As the scale of da...
The numerous strategies for the automated morphological categorization of galaxies, which uses a var...
Abstract. Galaxies are systems of dark matter, stars, gas and dust orbiting around a central concent...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
We examine a general framework for visualizing datasets of high (> 2) dimensionality, and demonstrat...
International audienceClassification of galaxies is traditionally associated with their morphologies...
We present the morphological catalogue of galaxies in nearby clusters of the WIde-field Nearby Galax...
Context. Morphology is the most accessible tracer of the physical structure of galaxies, but its int...
Measuring the morphological parameters of galaxies is a key requirement for studying their formation...
We explore unsupervised machine learning for galaxy morphology analyses using a combination of featu...