The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an extensive use of automatic methods for data processing and data interpretation. In this work, using data extracted from the Catalina Real Time Transient Survey (CRTS), we investigate the classification performance of some well tested methods: Random Forest, MultiLayer Perceptron with Quasi Newton Algorithm and K-Nearest Neighbours, paying special attention to the feature selection phase. In order to do so, several classification experiments were performed. Namely: identification of cataclysmic variables, separation between galactic and extragalactic objects and identification of supernovae
The nature of scientific and technological data collection is evolving rapidly: data volumes and rat...
With the recent advent of time domain astronomy through various surveys several approaches at classi...
Wide-field time domain facilities detect transient events in large numbers through difference imagin...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
Astronomy has entered the multi-messenger data era and Machine Learning has found widespread use in ...
An automated rapid classification of the transient events detected in modern synoptic sky surveys is...
An automated rapid classification of the transient events detected in modern synoptic sky surveys is...
Exploration of time domain is now a vibrant area of research in astronomy, driven by the advent of d...
We describe the development of a system for an automated, iterative, real-time classification of tra...
The search to find answers to the deepest questions we have about the Universe has fueled the collec...
The amount of collected data in many scientific fields is increasing, all of them requiring a common...
The amount of collected data in many scientific fields is increasing, all of them requiring a common...
The nature of scientific and technological data collection is evolving rapidly: data volumes and rat...
The nature of scientific and technological data collection is evolving rapidly: data volumes and rat...
With the recent advent of time domain astronomy through various surveys several approaches at classi...
Wide-field time domain facilities detect transient events in large numbers through difference imagin...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
The exploitation of present and future synoptic (multiband and multi-epoch) surveys requires an exte...
Astronomy has entered the multi-messenger data era and Machine Learning has found widespread use in ...
An automated rapid classification of the transient events detected in modern synoptic sky surveys is...
An automated rapid classification of the transient events detected in modern synoptic sky surveys is...
Exploration of time domain is now a vibrant area of research in astronomy, driven by the advent of d...
We describe the development of a system for an automated, iterative, real-time classification of tra...
The search to find answers to the deepest questions we have about the Universe has fueled the collec...
The amount of collected data in many scientific fields is increasing, all of them requiring a common...
The amount of collected data in many scientific fields is increasing, all of them requiring a common...
The nature of scientific and technological data collection is evolving rapidly: data volumes and rat...
The nature of scientific and technological data collection is evolving rapidly: data volumes and rat...
With the recent advent of time domain astronomy through various surveys several approaches at classi...
Wide-field time domain facilities detect transient events in large numbers through difference imagin...