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CAISE
2011
Springer

Supporting Dynamic, People-Driven Processes through Self-learning of Message Flows

12 years 8 months ago
Supporting Dynamic, People-Driven Processes through Self-learning of Message Flows
Abstract. Flexibility and automatic learning are key aspects to support users in dynamic business environments such as value chains across SMEs or when organizing a large event. Process centric information systems need to adapt to changing environmental constraints as reflected in the user’s behavior in order to provide suitable activity recommendations. This paper addresses the problem of automatically detecting and managing message flows in evolving people-driven processes. We introduce a probabilistic process model and message state model to learn message-activity dependencies, predict message occurrence, and keep the process model in line with real world user behavior. Our probabilistic process engine demonstrates rapid learning of message flow evolution while maintaining the quality of activity recommendations.
Christoph Dorn, Schahram Dustdar
Added 25 Aug 2011
Updated 25 Aug 2011
Type Journal
Year 2011
Where CAISE
Authors Christoph Dorn, Schahram Dustdar
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