Motivated by the abundance of uncertain event data from multiple sources including physical devices and sensors, this paper presents the task of relating a stochastic process observation to a process model that can be rendered from a dataset. In contrast to previous research that suggested to transform a stochastically known event log into a less informative uncertain log with upper and lower bounds on activity frequencies, we consider the challenge of accommodating the probabilistic knowledge into conformance checking techniques. Based on a taxonomy that captures the spectrum of conformance checking cases under stochastic process observations, we present three types of challenging cases. The first includes conformance checking of a stochas...
Process mining is a subfield of process science that analyzes event data collected in databases call...
A fundamental feature of the software process consists in its own stochastic in nature. A convenient...
A crucial requirement for compliance checking techniques is that observed behavior, captured in even...
Initially, process mining focused on discovering process models from event data, but in recent years...
Process mining aims to analyse business process behaviourby discovering process models such as Petri...
Business process management (BPM) aims to support changes and innovations in organizations’ processe...
Many algorithms now exist for discovering process models from event logs. These models usually descr...
Complex information systems generate large amount of event logs that represent the states of system ...
Given an event log as a collection of recorded real-world process traces, process mining aims to aut...
Conformance checking enables organizations to automatically identify compliance violations based on ...
Process Mining aims to support Business Process Management (BPM) by extracting information about pro...
Business process models represent corporate activities, their dependencies and relations, as far as ...
Process mining is a subfield of process science that analyzes event data collected in databases call...
A fundamental feature of the software process consists in its own stochastic in nature. A convenient...
A crucial requirement for compliance checking techniques is that observed behavior, captured in even...
Initially, process mining focused on discovering process models from event data, but in recent years...
Process mining aims to analyse business process behaviourby discovering process models such as Petri...
Business process management (BPM) aims to support changes and innovations in organizations’ processe...
Many algorithms now exist for discovering process models from event logs. These models usually descr...
Complex information systems generate large amount of event logs that represent the states of system ...
Given an event log as a collection of recorded real-world process traces, process mining aims to aut...
Conformance checking enables organizations to automatically identify compliance violations based on ...
Process Mining aims to support Business Process Management (BPM) by extracting information about pro...
Business process models represent corporate activities, their dependencies and relations, as far as ...
Process mining is a subfield of process science that analyzes event data collected in databases call...
A fundamental feature of the software process consists in its own stochastic in nature. A convenient...
A crucial requirement for compliance checking techniques is that observed behavior, captured in even...