Given the complexity of real-life event logs, several trace clustering techniques have been proposed to partition an event log into subsets with a lower degree of variation. In general, these techniques assume that the number of clusters is known in advance. However, this will rarely be the case in practice. Therefore, this paper presents approaches to determine the appropriate number of clusters in a trace clustering context. In order to fulfil the objective of identifying the most appropriate number of trace clusters, two approaches built on similarity are proposed: a stability- and a separation-based method. The stability-based method iteratively calculates the similarity between clustered versions of perturbed and unperturbed event logs...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process mining aims at mining valuable information from process execution results (called ???event l...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
© Springer International Publishing AG 2017. In recent years, a multitude of techniques has been pro...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process discovery is the learning task that entails the construction of process models from event lo...
Process mining refers to the extraction of process models from event logs. Real-life processes tend ...
Summarization: One of the main functions of process mining is the automated discovery of process mod...
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...
A novel method to cluster event log traces is presented in this paper. In contrast to the approaches...
International audienceProcess mining techniques use event logs containing real process executions in...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process mining aims at mining valuable information from process execution results (called ???event l...
Given the complexity of real-life event logs, several trace clustering techniques have been proposed...
© Springer International Publishing AG 2017. In recent years, a multitude of techniques has been pro...
The goal of process discovery is to visualize event log data as a process model. In reality, however...
Process discovery is the learning task that entails the construction of process models from event lo...
Process mining refers to the extraction of process models from event logs. Real-life processes tend ...
Summarization: One of the main functions of process mining is the automated discovery of process mod...
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...
A novel method to cluster event log traces is presented in this paper. In contrast to the approaches...
International audienceProcess mining techniques use event logs containing real process executions in...
Process mining techniques use event logs containing real process executions in order to mine, align ...
Within the field of process mining, several different trace clustering approaches exist for partitio...
Process mining aims at mining valuable information from process execution results (called ???event l...