Process event data is usually stored either in a sequential process event log or in a relational database. While the sequential, single-dimensional nature of event logs aids querying for event sub-sequences based on \emph{temporal relations} such as directly/eventually-follows'', it does not support querying multi-dimensional event data of multiple related entities. Relational databases allow storing multi-dimensional event data but existing query languages do not support querying for sequences or paths of events defined by temporal relations. In this paper, we report on an exploratory case study to store multi-dimensional event data in labeled property graphs and to query the graphs for structural and temporal properties together. Our mai...
We introduce a new, powerful query formulation formalism for complex, multivariate sequence data. Th...
We present a general approach for analyzing structural parameters of a relational event graph within...
Considerable amounts of data, including process event data, are collected and stored by organisation...
Process event data is usually stored either in a sequential process event log or in a relational dat...
Process event data is usually stored either in a sequential process event log or in a relational dat...
Master thesis report. Process event data contains events related to various entities of a proces...
Process mining as described in by Wil van der Aalst in is a combination of data mining and business ...
Datasets and scripts for modeling business process event log data in Neo4j Provides input data for ...
A collection of queries, Python scripts, and tutorials for using Cypher and Neo4j for creating, quer...
This report is the result of a Capita Selecta research project conducted at Eindhoven University of ...
We present data structures that can answer time windowed queries for a set of timestamped events in ...
International audienceIn recent years, many approaches have been proposed to support business proces...
Abstract-We introduce a new, powerful query formulation formalism for complex, multivariate sequence...
Process mining techniques rely on event logs: the extraction of a process model (discovery) takes a...
We introduce a new, powerful query formulation formalism for complex, multivariate sequence data. Th...
We present a general approach for analyzing structural parameters of a relational event graph within...
Considerable amounts of data, including process event data, are collected and stored by organisation...
Process event data is usually stored either in a sequential process event log or in a relational dat...
Process event data is usually stored either in a sequential process event log or in a relational dat...
Master thesis report. Process event data contains events related to various entities of a proces...
Process mining as described in by Wil van der Aalst in is a combination of data mining and business ...
Datasets and scripts for modeling business process event log data in Neo4j Provides input data for ...
A collection of queries, Python scripts, and tutorials for using Cypher and Neo4j for creating, quer...
This report is the result of a Capita Selecta research project conducted at Eindhoven University of ...
We present data structures that can answer time windowed queries for a set of timestamped events in ...
International audienceIn recent years, many approaches have been proposed to support business proces...
Abstract-We introduce a new, powerful query formulation formalism for complex, multivariate sequence...
Process mining techniques rely on event logs: the extraction of a process model (discovery) takes a...
We introduce a new, powerful query formulation formalism for complex, multivariate sequence data. Th...
We present a general approach for analyzing structural parameters of a relational event graph within...
Considerable amounts of data, including process event data, are collected and stored by organisation...