International audienceWe report a framework for spectroscopic follow-up design for optimizing supernova photometric classification. The strategy accounts for the unavoidable mismatch between spectroscopic and photometric samples, and can be used even in the beginning of a new survey – without any initial training set. The framework falls under the umbrella of active learning (AL), a class of algorithms that aims to minimize labelling costs by identifying a few, carefully chosen, objects that have high potential in improving the classifier predictions. As a proof of concept, we use the simulated data released after the SuperNova Photometric Classification Challenge (SNPCC) and a random forest classifier. Our results show that, using only 12 ...
The Vera C. Rubin Observatory will increase the number of observed supernovae (SNe) by an order of m...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
International audienceThe recent increase in volume and complexity of available astronomical data ha...
International audienceWe report a framework for spectroscopic follow-up design for optimizing supern...
Supernova Type Ia plays a vital role in the measurement of the cosmological parameters. It is used a...
International audienceContext. The Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) ...
In preparation for photometric classification of transients from the Legacy Survey of Space and Time...
International audienceIn the era of large astronomical surveys, photometric classification of supern...
We report results from the Supernova Photometric Classification Challenge (SNPhotCC), a publicly rel...
Future photometric supernova surveys will produce vastly more candidates than can be followed up spe...
We describe how the Fink broker early supernova Ia classifier optimizes its ML classifications by em...
We present a new solution to the problem of classifying Type Ia supernovae from their light curves a...
A long-lasting problem in astronomy is the accurate estimation of galaxy distances based solely on t...
Automated photometric supernova classification has become an active area of research in recent years...
The Vera C. Rubin Observatory will increase the number of observed supernovae (SNe) by an order of m...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
International audienceThe recent increase in volume and complexity of available astronomical data ha...
International audienceWe report a framework for spectroscopic follow-up design for optimizing supern...
Supernova Type Ia plays a vital role in the measurement of the cosmological parameters. It is used a...
International audienceContext. The Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) ...
In preparation for photometric classification of transients from the Legacy Survey of Space and Time...
International audienceIn the era of large astronomical surveys, photometric classification of supern...
We report results from the Supernova Photometric Classification Challenge (SNPhotCC), a publicly rel...
Future photometric supernova surveys will produce vastly more candidates than can be followed up spe...
We describe how the Fink broker early supernova Ia classifier optimizes its ML classifications by em...
We present a new solution to the problem of classifying Type Ia supernovae from their light curves a...
A long-lasting problem in astronomy is the accurate estimation of galaxy distances based solely on t...
Automated photometric supernova classification has become an active area of research in recent years...
The Vera C. Rubin Observatory will increase the number of observed supernovae (SNe) by an order of m...
International audienceThe next generation of astronomical surveys will revolutionize our understandi...
International audienceThe recent increase in volume and complexity of available astronomical data ha...