Dataset Open Access
Data model and generic query templates for translating and integrating a set of related CSV event logs into a single event graph for as used in https://dx.doi.org/10.1007/s13740-021-00122-1
Provides input data for 5 datasets (BPIC14, BPIC15, BPIC16, BPIC17, BPIC19)
Provides Python scripts to prepare and import each dataset into a Neo4j database instance through Cypher queries, representing behavioral information not globally (as in an event log), but locally per entity and per relation between entities.
Provides Python scripts to retrieve event data from a Neo4j database instance and render it using Graphviz dot.
Name | Size | |
---|---|---|
csv_to_eventgraph_neo4j_1.0.zip
md5:45e5b447ff997f374506f25775962934 |
229.9 MB | Download |
Stefan Esser, Dirk Fahland: Multi-Dimensional Event Data in Graph Databases (2020). arXiv: 2005.14552, https://arxiv.org/abs/2005.14552
Esser, Stefan. (2020, February 19). A Schema Framework for Graph Event Data. Zenodo. https://doi.org/10.5281/zenodo.3820037
Esser, S., Fahland, D.: Storing and querying multi-dimensional process event logs usinggraph databases. In: C.D. Francescomarino, R.M. Dijkman, U. Zdun (eds.) BusinessProcess Management Workshops - BPM 2019 International Workshops, Vienna, Austria,September 1-6, 2019, Revised Selected Papers,Lecture Notes in Business InformationProcessing, vol. 362, pp. 632–644. Springer (2019). https://doi.org/10.1007/978-3-030-37453-2_51
All versions | This version | |
---|---|---|
Views | 2,027 | 1,638 |
Downloads | 104 | 54 |
Data volume | 23.9 GB | 12.4 GB |
Unique views | 1,866 | 1,566 |
Unique downloads | 96 | 53 |