This paper presents a technique that aims to increase human understanding of trace clustering solutions. The clustering techniques under scrutiny stem from the process mining domain, where the clustering of process instances is deemed a useful technique to analyse process data with a large variety of behaviour. Until now, the most often used method to inspect clustering solutions in this domain is visual inspection of the clustering results. This paper proposes a more thorough approach based on the post hoc application of supervised learning with support vector machines on cluster results. Our approach learns concise rules to describe why a specific instance is included in a certain cluster based on specific control-flow based feature varia...
Process discovery is the learning task that entails the construction of process models from event lo...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process discovery is widely used in business process intelligence to reconstruct process models from...
This paper presents a technique that aims to increase human understanding of trace clustering soluti...
This paper presents SECPI (Search for Explanations of Clusters of Process Instances), a technique th...
In today's complex economic environment, organisations are interacting with an array of different ac...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process mining refers to the extraction of process models from event logs. Real-life processes tend ...
Abstract. Process mining refers to the extraction of process models from event logs. Real-life proce...
Process mining has proven to be a valuable tool for analyzing operational process executions based o...
Process mining refers to the discovery, conformance and enhancement of process models from event log...
International audienceProcess mining techniques use event logs containing real process executions in...
Process mining aims at mining valuable information from process execution results (called ???event l...
Information systems supporting business processes generate event data which provide the starting poi...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Process discovery is the learning task that entails the construction of process models from event lo...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process discovery is widely used in business process intelligence to reconstruct process models from...
This paper presents a technique that aims to increase human understanding of trace clustering soluti...
This paper presents SECPI (Search for Explanations of Clusters of Process Instances), a technique th...
In today's complex economic environment, organisations are interacting with an array of different ac...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process mining refers to the extraction of process models from event logs. Real-life processes tend ...
Abstract. Process mining refers to the extraction of process models from event logs. Real-life proce...
Process mining has proven to be a valuable tool for analyzing operational process executions based o...
Process mining refers to the discovery, conformance and enhancement of process models from event log...
International audienceProcess mining techniques use event logs containing real process executions in...
Process mining aims at mining valuable information from process execution results (called ???event l...
Information systems supporting business processes generate event data which provide the starting poi...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Process discovery is the learning task that entails the construction of process models from event lo...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process discovery is widely used in business process intelligence to reconstruct process models from...