Fast, highly accurate, and reliable inference of the sky origin of gravitational waves would enable real-time multimessenger astronomy. Current Bayesian inference methodologies, although highly accurate and reliable, are slow. Deep learning models have shown themselves to be accurate and extremely fast for inference tasks on gravitational waves, but their output is inherently questionable due to the blackbox nature of neural networks. In this work, we merge Bayesian inference and deep learning by applying importance sampling on an approximate posterior generated by a multiheaded convolutional neural network. The neural network parametrizes Von Mises-Fisher and Gaussian distributions for the sky coordinates and two masses for given simulated...
Understanding the properties of transient gravitational waves (GWs) and their sources is of broad in...
With the improving sensitivity of the global network of gravitational-wave detectors, we expect to o...
Convolutional Neural Networks (CNNs) have demonstrated potential for the real-time analysis of data ...
Fast, highly accurate, and reliable inference of the sky origin of gravitational waves would enable ...
We combine amortized neural posterior estimation with importance sampling for fast and accurate grav...
Gravitational waves from compact binaries measured by the LIGO and Virgo detectors are routinely ana...
The LIGO and Virgo gravitational-wave observatories have detected many exciting events over the past...
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) ...
Within the next few years, Advanced LIGO and Virgo should detect gravitational waves from binary neu...
The rapid release of accurate sky localization for gravitational-wave (GW) candidates is crucial for...
Deep learning techniques for gravitational-wave parameter estimation haveemerged as a fast alternati...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
A new era of gravitational wave (GW) astronomy has begun with the recent detections by LIGO. However...
Understanding the properties of transient gravitational waves (GWs) and their sources is of broad in...
With the improving sensitivity of the global network of gravitational-wave detectors, we expect to o...
Convolutional Neural Networks (CNNs) have demonstrated potential for the real-time analysis of data ...
Fast, highly accurate, and reliable inference of the sky origin of gravitational waves would enable ...
We combine amortized neural posterior estimation with importance sampling for fast and accurate grav...
Gravitational waves from compact binaries measured by the LIGO and Virgo detectors are routinely ana...
The LIGO and Virgo gravitational-wave observatories have detected many exciting events over the past...
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) ...
Within the next few years, Advanced LIGO and Virgo should detect gravitational waves from binary neu...
The rapid release of accurate sky localization for gravitational-wave (GW) candidates is crucial for...
Deep learning techniques for gravitational-wave parameter estimation haveemerged as a fast alternati...
We explore machine learning methods to detect gravitational waves (GW) from binary black hole (BBH) ...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
A new era of gravitational wave (GW) astronomy has begun with the recent detections by LIGO. However...
Understanding the properties of transient gravitational waves (GWs) and their sources is of broad in...
With the improving sensitivity of the global network of gravitational-wave detectors, we expect to o...
Convolutional Neural Networks (CNNs) have demonstrated potential for the real-time analysis of data ...