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CaLiGraph Ontology as a Challenge for Semantic Reasoners ([email protected]'21)

Overview

CaLiGraph for Semantic Reasoning Evaluation Challenge

This repository contains code and data to use CaLiGraph as a benchmark dataset in the Semantic Reasoning Evaluation Challange at the International Semantic Web Conference 2021 (ISWC'21).

The paper describing the dataset characteristics and results for well-known reasoners will be linked here as soon as a preprint is available.

Datasets

We use CaLiGraph version 2.1.0 as foundation for the challenge dataset. In particular, we use the files caligraph-ontology.nt.bz2 and caligraph-instances_types.nt.bz2 to generate our sample data.

We provide sample datasets having roughly 10n classes with n in [1,6]. The datasets and all potentially inferrable assertions can be found here. Please refer to our paper if you are interested in how the sample datasets were constructed.

Evaluated Reasoners

We evaluated the following reasoners with our sample datasets:

To evaluate the reasoners, we used their connectors in OWL API. The source code for the evaluation of the reasoners can be found in the folder reasoner_evaluation. As Pellet needs an OWL API version lower than 4 (while the others need a version higher than 4) we provide two pom.xml files. Depending on which reasoner you want to run, you have to use the correct one. Further, you have to uncomment the respective reasoners in the getReasoners() function of the java file org.unima.nheist.App.

Alternatively, you can use the two provided jar files to run the reasoners with the datasets. First download the sample dataset you want to run the reasoners on, then run the jar file and provide the location of the dataset as first argument like this:

java -jar semrec-caligraph-elk-hermit.jar <PATH-TO-DATASET-FILE> &> log_elk-hermit.txt

The result is a realization of the input dataset through the selected reasoners. Have a look at the log file (in the case of the example: log_elk-hermit.txt) for additional information about the reasoning process.

The precomputed results for all the sample datasets can be found here.

Owner
Nico Heist
Scientific Researcher and PhD Candidate at Data and Web Science Group, University of Mannheim
Nico Heist
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