Abstract
Information systems, which are responsible for driving many processes in our lives (health care, the web, municipalities, commerce and business, among others), store information in the form of logs which is often left unused. Process mining, a discipline in between data mining and software engineering, proposes tailored algorithms to exploit the information stored in a log, in order to reason about the processes underlying an information system. A key challenge in process mining is discovery: Given a log, derive a formal process model that can be used afterward for a formal analysis. In this paper, we provide a general approach based on satisfiability modulo theories (SMT) as a solution for this challenging problem. By encoding the problem into the logical/arithmetic domains and using modern SMT engines, it is shown how two separate families of process models can be discovered. The theory of this paper is accompanied with a tool, and experimental results witness the significance of this novel view of the process discovery problem.
Author supplied keywords
- Algorithm evaluation
- Big data
- Block-structured process discovery
- Causal nets
- Conformance checking
- Customer journey analytics
- Customer journey mapping
- Directly-follows graphs
- Genetic algorithms
- Integer linear programming
- Knowledge-based trace abst
- Pattern discovery
- Petri net synthesis
- Petri nets
- Process discovery
- Process mining
- Process model
- Rediscoverability
- Region theory
- SMT application
- Scalable process mining
- Semantic process mining
- System inference
- alignment
- business process management
- conformance checking
- constraint mining
- cyber-physical systems
- data science
- event logs
- explorative bpm
- fuzzy-DEVS
- knowledge-based trace abstraction
- medical applications
- model abstraction
- opportunity identification
- process discovery
- process innovation
- process mining
- process modeling
- runtime monitoring
- semantic process mining
- sese
- system entity structure
Cite
CITATION STYLE
B, T. K., Rabiser, R., Gr, P., Leonardi, G., Striani, M., Quaglini, S., … Chen, D. (2018). to Support Monitoring Cyber-Physical Systems. Software and Systems Modeling, 1(3), 1–21. Retrieved from https://www.fim-rc.de/Paperbibliothek/Veroeffentlicht/1015/wi-1015.pdf http://dx.doi.org/10.1007/978-3-030-11638-5_3%0Afile:///C:/Users/NM/Desktop/Literature Reiview Matrix References/geng-tax-zann-17-SIMPDA.pdf http://dx.doi.org/10.1007/978-3-030-21290-2
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.