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Michele Vallisneri

Showing results (1-10 of 6) with videos related to

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Physical Review Letters|December 21, 2011
Beyond the fisher-matrix formalism: exact sampling distributions of the maximum-likelihood estimator in gravitational-wave parameter estimationMichele Vallisneri
Physical Review Letters|February 15, 2020
Learning Bayesian Posteriors with Neural Networks for Gravitational-Wave InferenceAlvin J K Chua, Michele Vallisneri
Physical Review Letters|July 9, 2019
Reduced-Order Modeling with Artificial Neurons for Gravitational-Wave InferenceAlvin J K Chua, Chad R Galley, Michele Vallisneri
Physical Review Letters|September 10, 2025
Rapid Parameter Estimation for Pulsar-Timing-Array Datasets with Variational Inference and Normalizing FlowsMichele Vallisneri, Marco Crisostomi, Aaron D Johnson, et al.
Living Reviews in Relativity|February 7, 2017
Testing General Relativity with Low-Frequency, Space-Based Gravitational-Wave DetectorsJonathan R Gair, Michele Vallisneri, Shane L Larson, et al.
Physical Review Letters|January 14, 2022
Searching for Gravitational Waves from Cosmological Phase Transitions with the NANOGrav 12.5-Year DatasetZaven Arzoumanian, Paul T Baker, Harsha Blumer, et al.
Pageof 1

Showing results (1-10 of 6) with videos related to

Sort By:
Pageof 1
Physical Review Letters|December 21, 2011
Beyond the fisher-matrix formalism: exact sampling distributions of the maximum-likelihood estimator in gravitational-wave parameter estimationMichele Vallisneri
Physical Review Letters|February 15, 2020
Learning Bayesian Posteriors with Neural Networks for Gravitational-Wave InferenceAlvin J K Chua, Michele Vallisneri
Physical Review Letters|July 9, 2019
Reduced-Order Modeling with Artificial Neurons for Gravitational-Wave InferenceAlvin J K Chua, Chad R Galley, Michele Vallisneri
Physical Review Letters|September 10, 2025
Rapid Parameter Estimation for Pulsar-Timing-Array Datasets with Variational Inference and Normalizing FlowsMichele Vallisneri, Marco Crisostomi, Aaron D Johnson, et al.
Living Reviews in Relativity|February 7, 2017
Testing General Relativity with Low-Frequency, Space-Based Gravitational-Wave DetectorsJonathan R Gair, Michele Vallisneri, Shane L Larson, et al.
Physical Review Letters|January 14, 2022
Searching for Gravitational Waves from Cosmological Phase Transitions with the NANOGrav 12.5-Year DatasetZaven Arzoumanian, Paul T Baker, Harsha Blumer, et al.
Pageof 1