You're currently viewing an old version of this dataset. To see the current version, click here.

Trav-SHACL: Benchmarks, Experimental Settings, and Evaluation

This collection includes all the data and scripts necessary to reproduce the results from the experimental evaluation of Trav-SHACL at WWW'21.

The data is modified data from the Lehigh University Benchmark. The collection comprises nine data sets of three different sizes:

  • Small Knowledge Graph (SKG) models eight universities
  • Medium Knowledge Graph (MKG) models 32 universities
  • Large Knowledge Graph (LKG) models 256 universities

There are three data sets of each size. They differ only in those triples that link an entity to a university, i.e., the university the entity is linked to. This was done in order to achieve different percentages of valid universities when evaluating the SHACL shape schemas for the above-mentioned paper.

The data is available for download in Turtle format and preloaded for the use with Virtuoso 7.20.3229.

In order to reproduce the results reported, you will only need the archive of the scripts as the shapes are also included in that script and the data will be downloaded automatically.

Data and Resources

Cite this as

Mónica Figuera, Philipp D. Rohde, Maria-Esther Vidal (2021). Dataset: Trav-SHACL: Benchmarks, Experimental Settings, and Evaluation. https://doi.org/10.25835/0035739

DOI retrieved: January 20, 2021

Additional Info

Field Value
Imported on October 14, 2021
Last update July 15, 2024
Source https://data.uni-hannover.de/dataset/trav-shacl-benchmarks-experimental-settings-and-evaluation
Defined In https://doi.org/10.1145/3442381.3449877
Version 1.0
Author Mónica Figuera
More Authors
Philipp D. Rohde
Maria-Esther Vidal
Maintainer Philipp D. Rohde
Source Creation 20 January, 2021, 12:43 PM (UTC+0000)
Source Modified 20 January, 2022, 11:00 AM (UTC+0000)
Description Page https://github.com/SDM-TIB/Trav-SHACL/tree/eval-www2021
Publication Year 2021
Resource Type Experiment Scripts & Data
Link to ORKG https://www.orkg.org/orkg/paper/R576963