Recognition: unknown
Bayesian inference on compact binary inspiral gravitational radiation signals in interferometric data
classification
🌀 gr-qc
keywords
datainspiralbinarygravitationalinterferometricmcmcpresentedsignals
read the original abstract
Presented is a description of a Markov chain Monte Carlo (MCMC) parameter estimation routine for use with interferometric gravitational radiational data in searches for binary neutron star inspiral signals. Five parameters associated with the inspiral can be estimated, and summary statistics are produced. Advanced MCMC methods were implemented, including importance resampling and prior distributions based on detection probability, in order to increase the efficiency of the code. An example is presented from an application using realistic, albeit fictitious, data.
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