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Dokumenttyp:
Technical Report
Autor(en):
Jana Schmidt; Stefan Kramer
Titel:
Learning Probabilistc Real Time Automata From Multi-Attribute Event Logs
Abstract:
The growing number of time-labeled datasets in science and industry increases the need for algorithms that automatically induce process models. Existing methods are capable of identifying process models that typically only work on single attribute events. We propose a new model type and its corresponding algorithm to address the problem of mining multi-attribute events, meaning that each event is described by a vector of attributes. The model is based on timed automata, includes expressive descr...     »
Stichworte:
Probabilistic automata; multi-variate time series
Jahr:
2011
Jahr / Monat:
2011-10-10 00:00:00
Seiten/Umfang:
17
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