TY - GEN
T1 - Data-driven Improvement of Online Conformance Checking
AU - Stertz, Florian
AU - Mangler, Juergen
AU - Rinderle-Ma, Stefanie
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/10
Y1 - 2020/10
N2 - Conformance checking takes a process model and a process log as input and quantifies the degree of conformance between both. This allows a comparison between the intended behavior represented by the model and the actual behavior captured by the log and is useful for many applications such as auditing. Existing approaches calculate conformance as follows: each deviation between model and log is corrected by an alignment, e.g., inserting a missing event to the log, that has a standard per-deviation cost of 1. While deviations in the model can be handled this way, there is no way to differentiate between intended (e.g., ad-hoc repair of instances) and unintended (e.g., security breaches) deviations. Hence this work proposes an advanced cost function, that allows for per-deviation adjustments of the per-deviation costs. By inspecting how the data elements of subsequent tasks are affected, it becomes possible to automatically increase or decrease the per-deviation costs of 1, thus allowing for an automatic classification of deviation causes. The proposed approach works offline and online (i.e., at runtime) and is evaluated based on a real-world dataset from the manufacturing domain.
AB - Conformance checking takes a process model and a process log as input and quantifies the degree of conformance between both. This allows a comparison between the intended behavior represented by the model and the actual behavior captured by the log and is useful for many applications such as auditing. Existing approaches calculate conformance as follows: each deviation between model and log is corrected by an alignment, e.g., inserting a missing event to the log, that has a standard per-deviation cost of 1. While deviations in the model can be handled this way, there is no way to differentiate between intended (e.g., ad-hoc repair of instances) and unintended (e.g., security breaches) deviations. Hence this work proposes an advanced cost function, that allows for per-deviation adjustments of the per-deviation costs. By inspecting how the data elements of subsequent tasks are affected, it becomes possible to automatically increase or decrease the per-deviation costs of 1, thus allowing for an automatic classification of deviation causes. The proposed approach works offline and online (i.e., at runtime) and is evaluated based on a real-world dataset from the manufacturing domain.
KW - Data-driven Alignment Costs
KW - Logging Errors
KW - Online Conformance Checking
KW - Process mining and business analytics
UR - http://www.scopus.com/inward/record.url?scp=85096553560&partnerID=8YFLogxK
U2 - 10.1109/EDOC49727.2020.00031
DO - 10.1109/EDOC49727.2020.00031
M3 - Conference contribution
AN - SCOPUS:85096553560
T3 - Proceedings - 2020 IEEE 24th International Enterprise Distributed Object Computing Conference, EDOC 2020
SP - 187
EP - 196
BT - Proceedings - 2020 IEEE 24th International Enterprise Distributed Object Computing Conference, EDOC 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 24th IEEE International Enterprise Distributed Object Computing Conference, EDOC 2020
Y2 - 5 October 2020 through 8 October 2020
ER -