Process mining is often used by organisations to audit their business processes and improve their services and customer relations. Indeed, process execution (or event) logs constantly generated through various information systems can be employed to derive valuable insights about business operations. Compared to traditional process mining techniques such as Petri nets and the Business Process Model and Notation (BPMN), deep learning methods such as Recurrent Neural Networks, and Long Short-Term Memory (LSTM) in particular, have proven to achieve a better performance in terms of accuracy and generalising ability when predicting next events in business processes. However, unlike the traditional network-based process mining techniques that can ...
Process-aware information systems (PAIS) are systems relying on processes, which involve human and s...
Most enterprises and organizations have digitized their work by implementing process-aware informati...
The article presents an approach for automated generation of business process models by applying pr...
Process mining is often used by organisations to audit their business processes and improve their se...
Process mining is often used by organisations to audit their business processes and improve their se...
Process Mining consists of techniques where logs created by operative systems are transformed into p...
Deep-learning models such as Convolutional Neural Networks (CNN) and Long Short-Term Memory (L...
Anticipating the next events of an ongoing series of activities has many compelling applications in ...
For the reliable prediction and analysis of large amounts of data, big data analytics may be applied...
Today’s many modern organizations, to get competitive advantages, have been already implemented busi...
Process mining seeks the confrontation between modeled behavior and observed behavior. In recent yea...
Predictive process monitoring concerns itself with the prediction of ongoing cases in (business) pro...
Process mining seeks the confrontation between modeled behavior and observed behavior. In recent yea...
Ever growing data availability combined with rapid progress in the field of analytics has laid the f...
Process-aware information systems (PAIS) are systems relying on processes, which involve human and s...
Most enterprises and organizations have digitized their work by implementing process-aware informati...
The article presents an approach for automated generation of business process models by applying pr...
Process mining is often used by organisations to audit their business processes and improve their se...
Process mining is often used by organisations to audit their business processes and improve their se...
Process Mining consists of techniques where logs created by operative systems are transformed into p...
Deep-learning models such as Convolutional Neural Networks (CNN) and Long Short-Term Memory (L...
Anticipating the next events of an ongoing series of activities has many compelling applications in ...
For the reliable prediction and analysis of large amounts of data, big data analytics may be applied...
Today’s many modern organizations, to get competitive advantages, have been already implemented busi...
Process mining seeks the confrontation between modeled behavior and observed behavior. In recent yea...
Predictive process monitoring concerns itself with the prediction of ongoing cases in (business) pro...
Process mining seeks the confrontation between modeled behavior and observed behavior. In recent yea...
Ever growing data availability combined with rapid progress in the field of analytics has laid the f...
Process-aware information systems (PAIS) are systems relying on processes, which involve human and s...
Most enterprises and organizations have digitized their work by implementing process-aware informati...
The article presents an approach for automated generation of business process models by applying pr...