CollabKG: A Learnable Human-Machine-Cooperative Information Extraction Toolkit for (Event) Knowledge Graph Construction
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CollabKG is an open-source IE annotation toolkit that unifies NER, RE, and EE tasks, integrates KG and EKG, and supports both English and Chinese languages.
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CollabKG combines automatic and manual labeling to build a learnable human-machine cooperative system. In particular, humans benefit from machines and meanwhile, manual labeling provides a reference for machines to update during annotation.
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Additionally, CollabKG is designed with many other appealing features (customization, training-free, propagation, etc) that enhance productivity, power, and user-friendliness. We holistically compare our toolkit with other existing tools on these features.
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CollabKG Extensive human studies suggest that CollabKG can significantly improve the effectiveness and efficiency of manual annotation, as well as reduce variance.
🎥 CollabKG systems demonstration video
📌 Overview of how to use CollabKG
📌 Frequently Asked Questions (FAQ)
📨 Feel free to reach out if you have any questions by emailing 22120436@bjtu.edu.cn
CollabKG can be built using Docker. Before doing so please add a secure token to the TOKEN_SECRET
field in /server/.env
for user password hashing and salting. After this, in the repository root directory, execute:
$ make run
or alternatively:
$ docker-compose -f docker-compose.yml up
If you come across any issues, bugs or have any general feedback please feel free to reach out (email: 22120436@bjtu.edu.cn). Alternatively, feel free to raise an issue, or better yet, make a pull request 🙂.
Thanks to the QuickGraph team for their support.
Please cite our [paper] if you find it useful in your research: