Context. With a rapidly rising number of transients detected in astronomy, classification methods based on machine learning are increasingly being employed. Their goals are typically to obtain a definitive classification of transients, and for good performance they usually require the presence of a large set of observations. However, well-designed, targeted models can reach their classification goals with fewer computing resources. Aims. The aim of this study is to assist in the observational astronomy task of deciding whether a newly detected transient warrants follow-up observations. Methods. This paper presents SNGuess, a model designed to find young extragalactic nearby transients with high purity. SNGuess works with a set of features t...
An automated, rapid classification of transient events detected in the modern synoptic sky surveys i...
We describe the development of a system for an automated, iterative, real-time classification of tra...
The unprecedented volume and rate of transient events that will be discovered by the Large Synoptic ...
Context. With a rapidly rising number of transients detected in astronomy, classification methods ba...
International audienceContext. Both multi-messenger astronomy and new high-throughput wide-field sur...
International audienceWe describe an algorithm for identifying point-source transients and moving ob...
International audienceContext. The Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) ...
We describe an algorithm for identifying point-source transients and moving objects on reference-sub...
International audienceWe report the automatic detection of 11 transients (7 possible supernovae and ...
Time-domain astronomy has reached an incredible new era where unprecedented amounts of data are beco...
International audienceThe large sky localization regions offered by the gravitational-wave interfero...
The Legacy Survey of Space and Time (LSST) at the Vera C. Rubin Observatory will discover tens of th...
Several fundamental experiments in physics and astronomy, such as the discovery of dark energy and t...
An automated, rapid classification of transient events detected in the modern synoptic sky surveys i...
We describe the development of a system for an automated, iterative, real-time classification of tra...
The unprecedented volume and rate of transient events that will be discovered by the Large Synoptic ...
Context. With a rapidly rising number of transients detected in astronomy, classification methods ba...
International audienceContext. Both multi-messenger astronomy and new high-throughput wide-field sur...
International audienceWe describe an algorithm for identifying point-source transients and moving ob...
International audienceContext. The Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) ...
We describe an algorithm for identifying point-source transients and moving objects on reference-sub...
International audienceWe report the automatic detection of 11 transients (7 possible supernovae and ...
Time-domain astronomy has reached an incredible new era where unprecedented amounts of data are beco...
International audienceThe large sky localization regions offered by the gravitational-wave interfero...
The Legacy Survey of Space and Time (LSST) at the Vera C. Rubin Observatory will discover tens of th...
Several fundamental experiments in physics and astronomy, such as the discovery of dark energy and t...
An automated, rapid classification of transient events detected in the modern synoptic sky surveys i...
We describe the development of a system for an automated, iterative, real-time classification of tra...
The unprecedented volume and rate of transient events that will be discovered by the Large Synoptic ...