The aim of process discovery, originating from the area of process mining, is
to discover a process model based on business process execution data. A
majority of process discovery techniques relies on an event log as an input. An
event log is a static source of historical data capturing the execution of a
business process. In this paper we focus on process discovery relying on online
streams of business process execution events. Learning process models from
event streams poses both challenges and opportunities, i.e. we need to handle
unlimited amounts of data using finite memory and, preferably, constant time.
We propose a generic architecture that allows for adopting several classes of
existing process discovery techniques in context of event streams. Moreover, we
provide several instantiations of the architecture, accompanied by
implementations in the process mining tool-kit ProM (http://promtools.org).
Using these instantiations, we evaluate several dimensions of stream-based
process discovery. The evaluation shows that the proposed architecture allows
us to lift process discovery to the streaming domain.Comment: Accepted for publication in "Knowledge and Information Systems; "
(Springer: http://link.springer.com/journal/10115