In the immediate aftermath of a strong earthquake and in the presence of an ongoing aftershock
sequence, scientifc advisories in terms of seismicity forecasts play quite a crucial role in emergency
decision-making and risk mitigation. Epidemic Type Aftershock Sequence (ETAS) models are frequently
used for forecasting the spatio-temporal evolution of seismicity in the short-term. We propose robust
forecasting of seismicity based on ETAS model, by exploiting the link between Bayesian inference
and Markov Chain Monte Carlo Simulation. The methodology considers the uncertainty not only in the
model parameters, conditioned on the available catalogue of events occurred before the forecasting
interval, but also the uncertainty in the sequence of events that are going to happen during the
forecasting interval. We demonstrate the methodology by retrospective early forecasting of seismicity
associated with the 2016 Amatrice seismic sequence activities in central Italy. We provide robust spatiotemporal
short-term seismicity forecasts with various time intervals in the frst few days elapsed after
each of the three main events within the sequence, which can predict the seismicity within plus/minus
two standard deviations from the mean estimate within the few hours elapsed after the main event
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