Quantifying galaxy morphology is a challenging yet scientifically rewarding task. As the scale of data continues to increase with upcoming surveys, traditional classification methods will struggle to handle the load. We present a solution through an integration of visual and automated classifications, preserving the best features of both human and machine. We demonstrate the effectiveness of such a system through a re-analysis of visual galaxy morphology classifications collected during the Galaxy Zoo 2 (GZ2) project. We reprocess the top-level question of the GZ2 decision tree with a Bayesian classification aggregation algorithm dubbed SWAP, originally developed for the Space Warps gravitational lens project. Through a simple binary classi...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society ...
We apply four statistical learning methods to a sample of 7941 galaxies (z < 0.06) from the Galaxy A...
Quantifying galaxy morphology is a challenging yet scientifically rewarding task. As the scale of da...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We present the data release for Galaxy Zoo 2 (GZ2), a citizen science project with more than 16 mill...
Abstract. Galaxies are systems of dark matter, stars, gas and dust orbiting around a central concent...
University of Minnesota Ph.D. dissertation.January 2018. Major: Astrophysics. Advisor: Claudia Scar...
The classification of galaxy morphology plays a crucial role in understanding galaxy formation and e...
In this work, decision tree learning algorithms and fuzzy inferencing systems are applied for galaxy...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
Galaxy morphology is a fundamental quantity, which is essential not only for the full spectrum of ga...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera L...
There are several supervised machine learning methods used for the application of automated morpholo...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society ...
We apply four statistical learning methods to a sample of 7941 galaxies (z < 0.06) from the Galaxy A...
Quantifying galaxy morphology is a challenging yet scientifically rewarding task. As the scale of da...
In this thesis, we present a complete study of machine learning applications, in- cluding both super...
We present the data release for Galaxy Zoo 2 (GZ2), a citizen science project with more than 16 mill...
Abstract. Galaxies are systems of dark matter, stars, gas and dust orbiting around a central concent...
University of Minnesota Ph.D. dissertation.January 2018. Major: Astrophysics. Advisor: Claudia Scar...
The classification of galaxy morphology plays a crucial role in understanding galaxy formation and e...
In this work, decision tree learning algorithms and fuzzy inferencing systems are applied for galaxy...
Context. Machine learning methods are effective tools in astronomical tasks for classifying objects ...
Galaxy morphology is a fundamental quantity, which is essential not only for the full spectrum of ga...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
We present Galaxy Zoo DECaLS: detailed visual morphological classifications for Dark Energy Camera L...
There are several supervised machine learning methods used for the application of automated morpholo...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society ...
We apply four statistical learning methods to a sample of 7941 galaxies (z < 0.06) from the Galaxy A...