Compact binary systems emit gravitational radiation which is potentially detectable by current Earth bound detectors. Extracting these signals from the instruments' background noise is a complex problem and the computational cost of most current searches depends on the complexity of the source model. Deep learning may be capable of finding signals where current algorithms hit computational limits. Here we restrict our analysis to signals from non-spinning binary black holes and systematically test different strategies by which training data is presented to the networks. To assess the impact of the training strategies, we re-analyze the first published networks and directly compare them to an equivalent matched-filter search. We find that th...
We present a first proof-of-principle study for using deep neural networks (DNNs) as a novel search ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge (...
The ability of deep learning (DL) approaches to learn generalised signal and noise models, coupled w...
Gravitational waves from the coalescence of compact-binary sources are now routinely observed by Ear...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
Gravitational waves are now observed routinely. Therefore, data analysis has to keep up with ever im...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH)...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge (...
With the advent of gravitational wave astronomy, techniques to extend the reach of gravitational wav...
With the advent of gravitational wave astronomy, techniques to extend the reach of gravitational wav...
We present a convolutional neural network, designed in the auto-encoder configuration that can detec...
We present a first proof-of-principle study for using deep neural networks (DNNs) as a novel search ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge (...
The ability of deep learning (DL) approaches to learn generalised signal and noise models, coupled w...
Gravitational waves from the coalescence of compact-binary sources are now routinely observed by Ear...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
Gravitational waves are now observed routinely. Therefore, data analysis has to keep up with ever im...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH)...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge. ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge (...
With the advent of gravitational wave astronomy, techniques to extend the reach of gravitational wav...
With the advent of gravitational wave astronomy, techniques to extend the reach of gravitational wav...
We present a convolutional neural network, designed in the auto-encoder configuration that can detec...
We present a first proof-of-principle study for using deep neural networks (DNNs) as a novel search ...
We present the results of the first Machine Learning Gravitational-Wave Search Mock Data Challenge (...
The ability of deep learning (DL) approaches to learn generalised signal and noise models, coupled w...