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Leveraging regression algorithms for process performance predictions

Journal Article


Abstract


  • Industry-scale context-aware processes typically manifest a large number of variants during their execution. Being able to predict the performance of a partially executed process instance (in terms of cost, time or customer satisfaction) can be particularly useful. Such predictions can help in permitting interventions to improve matters for instances that appear likely to perform poorly. This paper proposes an approach for leveraging the process context, process state, and process goals to obtain such predictions.

Publication Date


  • 2018

Citation


  • Ponnalagu, K., Ghose, A. & Dam, H. Khanh. (2018). Leveraging regression algorithms for process performance predictions. Lecture Notes in Computer Science, 11236 524-531. Hangzhou, China International Conference on Service-Oriented Computing

Scopus Eid


  • 2-s2.0-85056865992

Number Of Pages


  • 7

Start Page


  • 524

End Page


  • 531

Volume


  • 11236

Place Of Publication


  • Germany

Abstract


  • Industry-scale context-aware processes typically manifest a large number of variants during their execution. Being able to predict the performance of a partially executed process instance (in terms of cost, time or customer satisfaction) can be particularly useful. Such predictions can help in permitting interventions to improve matters for instances that appear likely to perform poorly. This paper proposes an approach for leveraging the process context, process state, and process goals to obtain such predictions.

Publication Date


  • 2018

Citation


  • Ponnalagu, K., Ghose, A. & Dam, H. Khanh. (2018). Leveraging regression algorithms for process performance predictions. Lecture Notes in Computer Science, 11236 524-531. Hangzhou, China International Conference on Service-Oriented Computing

Scopus Eid


  • 2-s2.0-85056865992

Number Of Pages


  • 7

Start Page


  • 524

End Page


  • 531

Volume


  • 11236

Place Of Publication


  • Germany