Unsupervised probabilistic machine learning applied to seismicity declustering: a new approach to represent earthquake catalogues with fewer assumptions
Abstract:Many applications in seismology require to isolate earthquake clusters
from a background activity. Relative declustering methods essentially
find a 2D representation of an earthquake catalogue that distinguishes
between two classes of events: crisis and non-crisis events. However,
the number of statistical and/or physical parameters to be used is often
limited due to the difficulty of concatenating the information onto a
physically meaningful 2D grid. In this study, we propose to alleviate
the declustering tas… Show more
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