Trace clustering techniques are a set of approaches for partitioning traces or process instances into similar groups. Typically, this partitioning is based on certain patterns or similarity between the traces, or done by discovering a process model for each cluster of traces. In general, however, it is likely that clustering solutions obtained by these approaches will be hard to understand or difficult to validate given an expert’s domain knowledge. Therefore, we propose a novel semi-supervised trace clustering technique based on expert knowledge. Our approach is validated using a case in tablet reading behaviour, but widely applicable in other contexts. In an experimental evaluation, the technique is shown to provide a beneficial trade-off...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Summarization: In flexible environments (such as healthcare or customer service), the observed behav...
Business information systems support a large variety of business processes and tasks, yet organizati...
Trace clustering techniques are a set of approaches for partitioning traces or process instances int...
Within the field of process mining, several different trace clustering approaches exist for partitio...
© Springer International Publishing AG 2017. In recent years, a multitude of techniques has been pro...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
In today's complex economic environment, organisations are interacting with an array of different ac...
This paper presents a technique that aims to increase human understanding of trace clustering soluti...
Process discovery is the learning task that entails the construction of process models from event lo...
International audienceProcess mining techniques use event logs containing real process executions in...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
Summarization: One of the main functions of process mining is the automated discovery of process mod...
A novel method to cluster event log traces is presented in this paper. In contrast to the approaches...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Summarization: In flexible environments (such as healthcare or customer service), the observed behav...
Business information systems support a large variety of business processes and tasks, yet organizati...
Trace clustering techniques are a set of approaches for partitioning traces or process instances int...
Within the field of process mining, several different trace clustering approaches exist for partitio...
© Springer International Publishing AG 2017. In recent years, a multitude of techniques has been pro...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
In today's complex economic environment, organisations are interacting with an array of different ac...
This paper presents a technique that aims to increase human understanding of trace clustering soluti...
Process discovery is the learning task that entails the construction of process models from event lo...
International audienceProcess mining techniques use event logs containing real process executions in...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
Summarization: One of the main functions of process mining is the automated discovery of process mod...
A novel method to cluster event log traces is presented in this paper. In contrast to the approaches...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Summarization: In flexible environments (such as healthcare or customer service), the observed behav...
Business information systems support a large variety of business processes and tasks, yet organizati...