CSKG is a commonsense knowledge graph that combines seven popular sources into a consolidated representation

Overview

CSKG: The CommonSense Knowledge Graph

doi CC BY-SA 4.0

CSKG is a commonsense knowledge graph that combines seven popular sources into a consolidated representation:

CSKG is represented as a hyper-relational graph, by using the KGTK data model and file specification. Its creation is entirely supported by KGTK operations.

CSKG is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

Getting started

Documentation

Data

Embeddings

More info

Consolidating your own CSKG

  1. Setup your conda environment
conda create --name mowgli --file requirements.txt
conda activate mowgli
  1. Download and store individual sources, except WordNet and FrameNet. By default, these should be stored in the input directory.

  2. Download the mappings from this folder and place them inside the input directory

  3. Customize and run create_cskg.sh.

How to cite

@article{ilievski2021cskg,
  title={CSKG: The CommonSense Knowledge Graph},
  author={Ilievski, Filip and Szekely, Pedro and Zhang, Bin},
  journal={Extended Semantic Web Conference (ESWC)},
  year={2021}
}
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