Event Log Sampling for Predictive Monitoring
Predictive process monitoring is an exceedingly active field of research. At its core, the fundamental component of predictive monitoring is the abstraction technique it uses to obtain a fixed-length representation of the process component subject to the prediction (often, but not always, process traces). In the earlier approaches, the need for such abstraction was overcome through model-aware techniques, employing process models and replay techniques on partial traces to abstract a flat representation of event sequences. Such process models are mostly automatically discovered from a set of available complete traces, and require perfect fitness on training instances (and, seldomly, also on unseen test instances). For instance, van der Aalst et al. [van_der_aalst_time_2011] proposed a time prediction framework based on replaying partial traces on a transition system, effectively clustering training instances by control-flow information.
Apr-6-2022, 08:10:54 GMT