Dynamically allocating the most appropriate resource to execute the different activities of a business process is an important challenge in business process management. An ineffective allocation may lead to an inadequate resources usage, higher costs, or a poor process performance. Different approaches have been used to solve this challenge: data mining techniques, probabilistic allocation, or even manual allocation. However, there is a need for methods that support resource allocation based on multi-factor criteria. We propose a framework for recommending resource allocation based on Process Mining that does the recommendation at sub-process level, instead of activity-level. We introduce a resource process cube that provides a flexible, extensible and fine-grained mechanism to abstract historical information about past process executions. Then, several metrics are computed considering different criteria to obtain a final recommendation ranking based on the BPA algorithm. The approach is applied to a help desk scenario to demonstrate its usefulness.
Registro Sencillo
Registro Completo
Autor | Arias, Michael Rojas, Eric Muñoz Gama, Jorge Sepúlveda Fernández, Marcos Ernesto |
Título | A Framework for Recommending Resource Allocation based on Process Mining |
Revista | Lecture Notes in Business Information Processing |
ISSN | 1865-1348 |
Volumen | 256 |
Número de publicación | 1 |
Página inicio | 458 |
Página final | 470 |
Fecha de publicación | 2016 |
Resumen | Dynamically allocating the most appropriate resource to execute the different activities of a business process is an important challenge in business process management. An ineffective allocation may lead to an inadequate resources usage, higher costs, or a poor process performance. Different approaches have been used to solve this challenge: data mining techniques, probabilistic allocation, or even manual allocation. However, there is a need for methods that support resource allocation based on multi-factor criteria. We propose a framework for recommending resource allocation based on Process Mining that does the recommendation at sub-process level, instead of activity-level. We introduce a resource process cube that provides a flexible, extensible and fine-grained mechanism to abstract historical information about past process executions. Then, several metrics are computed considering different criteria to obtain a final recommendation ranking based on the BPA algorithm. The approach is applied to a help desk scenario to demonstrate its usefulness. |
Derechos | acceso restringido |
DOI | 10.1007/978-3-319-42887-1_37 |
Enlace | |
Id de publicación en WoS | WOS:000387749900042 |
Paginación | 13 páginas |
Temática | Ingeniería |
Tipo de documento | comunicación de congreso |