Predictive process monitoring aims to accurately predict a variable of interest (e.g., remaining time) or the future state of the process instance (e.g., outcome or next step). The quest for models with higher predictive power has led to the development of a variety of novel approaches. However, though social contextual factors are widely acknowledged to impact the way cases are handled, as yet there have been no studies which have investigated the impact of social contextual features in the predictive process monitoring framework. These factors encompass the way humans and automated agents interact within a particular organisation to execute process-related activities. This paper seeks to address this problem by investigating the impact of...
As organizations gain awareness of the potential business value locked in their process execution ev...
Predictive business process monitoring methods exploit historical process execution logs to provide ...
Predictive process monitoring is concerned with predicting measures of interest for a running case (...
Predictive business process monitoring aims to accurately predict a variable of interest (e.g. remai...
Predictive process monitoring aims to accurately predict a variable of interest (e.g. remaining time...
Predictive process monitoring is a central practice in business process management that allows for t...
This thesis addresses contextual and ethical issues in the predictive process monitoring framework a...
Predictive Process Monitoring is a branch of process mining that aims at predicting, at runtime, the...
It is well-known that context impacts running instances of a process. Thus, defining and using cont...
Predictive business process monitoring methods exploit historical process execution logs to generate...
Predictive process monitoring is a subfield of process mining that aims to estimate case or event fe...
Accurate prediction of the completion time of a business process instance would constitute a valuabl...
Predictive business process monitoring deals with predicting a process’s future behavior or the valu...
Events recorded during the execution of a business process can be used to train models to predict, a...
Event logs generated by Process-Aware Information Systems (PAIS) provide many opportunities for anal...
As organizations gain awareness of the potential business value locked in their process execution ev...
Predictive business process monitoring methods exploit historical process execution logs to provide ...
Predictive process monitoring is concerned with predicting measures of interest for a running case (...
Predictive business process monitoring aims to accurately predict a variable of interest (e.g. remai...
Predictive process monitoring aims to accurately predict a variable of interest (e.g. remaining time...
Predictive process monitoring is a central practice in business process management that allows for t...
This thesis addresses contextual and ethical issues in the predictive process monitoring framework a...
Predictive Process Monitoring is a branch of process mining that aims at predicting, at runtime, the...
It is well-known that context impacts running instances of a process. Thus, defining and using cont...
Predictive business process monitoring methods exploit historical process execution logs to generate...
Predictive process monitoring is a subfield of process mining that aims to estimate case or event fe...
Accurate prediction of the completion time of a business process instance would constitute a valuabl...
Predictive business process monitoring deals with predicting a process’s future behavior or the valu...
Events recorded during the execution of a business process can be used to train models to predict, a...
Event logs generated by Process-Aware Information Systems (PAIS) provide many opportunities for anal...
As organizations gain awareness of the potential business value locked in their process execution ev...
Predictive business process monitoring methods exploit historical process execution logs to provide ...
Predictive process monitoring is concerned with predicting measures of interest for a running case (...