Despite the utility of neural networks (NNs) for astronomical time-series classification, the proliferation of learning architectures applied to diverse data sets has thus far hampered a direct intercomparison of different approaches. Here we perform the first comprehensive study of variants of NN-based learning and inference for astronomical time series, aiming to provide the community with an overview on relative performance and, hopefully, a set of best-in-class choices for practical implementations. In both supervised and self-supervised contexts, we study the effects of different time-series-compatible layer choices, namely the dilated temporal convolutional neural network (dTCNs), long-short term memory NNs, gated recurrent units and ...
One of the brightest objects in the universe, supernovae (SNe) are powerful explosions marking the e...
We apply deep recurrent neural networks, which are capable of learning complex sequential informatio...
Astronomy has entered the multi-messenger data era and Machine Learning has found widespread use in ...
Astronomical surveys of celestial sources produce streams of noisy time series measuring flux versus...
International audienceAims. The treatment of astronomical image time series has won increasing atten...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
The European Southern Observatory's planned Astronomical Weather Station for the Very Large Tel...
International audienceOne of the brightest objects in the universe, supernovae (SNe) are powerful ex...
We give a brief overview of artificial neural networks (ANNs), focusing on Kohonen networks (KNs). T...
International audienceCosmologists are facing the problem of the analysis of a huge quantity of data...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
Variable stars play a prominent role in our study of the universe and are essential to estimating co...
One of the brightest objects in the universe, supernovae (SNe) are powerful explosions marking the e...
We apply deep recurrent neural networks, which are capable of learning complex sequential informatio...
Astronomy has entered the multi-messenger data era and Machine Learning has found widespread use in ...
Astronomical surveys of celestial sources produce streams of noisy time series measuring flux versus...
International audienceAims. The treatment of astronomical image time series has won increasing atten...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
The European Southern Observatory's planned Astronomical Weather Station for the Very Large Tel...
International audienceOne of the brightest objects in the universe, supernovae (SNe) are powerful ex...
We give a brief overview of artificial neural networks (ANNs), focusing on Kohonen networks (KNs). T...
International audienceCosmologists are facing the problem of the analysis of a huge quantity of data...
In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to...
Variable stars play a prominent role in our study of the universe and are essential to estimating co...
One of the brightest objects in the universe, supernovae (SNe) are powerful explosions marking the e...
We apply deep recurrent neural networks, which are capable of learning complex sequential informatio...
Astronomy has entered the multi-messenger data era and Machine Learning has found widespread use in ...