he performance of business processes is measured and monitored in terms of Key Performance Indicators (KPIs). If the monitoring results show that the KPI targets are violated, the underlying reasons have to be identified and the process should be adapted accordingly to address the violations. In this paper we propose an integrated monitoring, prediction and adaptation approach for preventing KPI violations of business process instances. KPIs are monitored continuously while the process is executed. Additionally, based on KPI measurements of historical process instances we use decision tree learning to construct classification models which are then used to predict the KPI value of an instance while it is still running. If a KPI violation is ...
In order to investigate the economic performance of business processes, simulations are performed. T...
Business processes run at the core of an organisation\u27s value creation and are often the target o...
This thesis explores data-driven, predictive approaches to monitor business process performance. The...
In enterprises, decision makers need to continuously monitor business processes to guarantee for a h...
Key Performance Indicators (KPIs) can be used to evaluate the success of an organization, facilitati...
Case company, ABB, measures its success in order fulfillment process with on-time delivery KPI. Tren...
Nowadays, more and more industrial organizations are using Business Process Model and Notation (BPMN...
In order to have a full control on their processes, companies need to ensure real time monitoring an...
Process-aware information systems are valuable for automating business tasks leading to cost reducti...
AbstractAn approach to business process modelling for short term KPI prediction, based on event logs...
Nowadays, more and more industrial organizations are using Business Process Model and Notation (BPMN...
Recent years have witnessed a growing adoption of machine learning techniques for business improveme...
Predictive business process monitoring is a current research area which purpose is to predict the ou...
Key performances indicators (KPIs) are an integral part of business intelligence systems as the choi...
This thesis aims to optimize the machine learning algorithms for predicting KPI metrics for an organ...
In order to investigate the economic performance of business processes, simulations are performed. T...
Business processes run at the core of an organisation\u27s value creation and are often the target o...
This thesis explores data-driven, predictive approaches to monitor business process performance. The...
In enterprises, decision makers need to continuously monitor business processes to guarantee for a h...
Key Performance Indicators (KPIs) can be used to evaluate the success of an organization, facilitati...
Case company, ABB, measures its success in order fulfillment process with on-time delivery KPI. Tren...
Nowadays, more and more industrial organizations are using Business Process Model and Notation (BPMN...
In order to have a full control on their processes, companies need to ensure real time monitoring an...
Process-aware information systems are valuable for automating business tasks leading to cost reducti...
AbstractAn approach to business process modelling for short term KPI prediction, based on event logs...
Nowadays, more and more industrial organizations are using Business Process Model and Notation (BPMN...
Recent years have witnessed a growing adoption of machine learning techniques for business improveme...
Predictive business process monitoring is a current research area which purpose is to predict the ou...
Key performances indicators (KPIs) are an integral part of business intelligence systems as the choi...
This thesis aims to optimize the machine learning algorithms for predicting KPI metrics for an organ...
In order to investigate the economic performance of business processes, simulations are performed. T...
Business processes run at the core of an organisation\u27s value creation and are often the target o...
This thesis explores data-driven, predictive approaches to monitor business process performance. The...