Author:
Di Francescomarino Chiara,Ghidini Chiara
Abstract
AbstractPredictive Process Monitoring [29] is a branch of process mining that aims at predicting the future of an ongoing (uncompleted) process execution. Typical examples of predictions of the future of an execution trace relate to the outcome of a process execution, to its completion time, or to the sequence of its future activities
Publisher
Springer International Publishing
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