Abstract:
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The Pacific Northwest (PNW) has substantial earthquake risk and stable models of its earthquake rates are key to probabilistic seismic forecasting for the continental PNW. The Epidemic-Type Aftershock Sequence model (ETAS) is a spatiotemporal point process model which parameterizes the rates of background earthquakes and aftershocks within a seismic region, using a catalog of its past earthquakes. Typically, maximum likelihood estimation is used to fit ETAS to an earthquake catalog; however, the ETAS likelihood suffers from flatness near its optima, parameter correlation and numerical instability, making MLEs less reliable. We present a Bayesian procedure to estimate ETAS parameters, such that parameters can be reliably estimated and their uncertainties resolved. The procedure is conditional on knowing which earthquakes triggered which aftershocks; this latent structure and the ETAS parameters are estimated stepwise, similar to the E-M algorithm. Our procedure uses a Gibbs sampler to conditionally estimate the posterior distributions of model parameters. More detailed information about PNW aftershocks can be estimated using Bayesian ETAS than using simpler seismicity models.
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