An Open Information Extraction (OIE) system which provides structured knowledge enriched with semantic information about citations. This system is based upon the OIE system MinIE.
Open Information Extraction (OIE) systems aim to extract unseen relations and their arguments from unstructured text in unsupervised manner. In its simplest form, given a natural language sentence, they extract information in the form of a triple, consisted of subject (S), relation (R) and object (O).
Suppose we have the following input sentence:
AMD, which is based in U.S., is a technology company.
An OIE system aims to make the following extractions:
("AMD"; "is based in"; "U.S.")
("AMD"; "is"; "technology company")
For the demos, please refer to the classes tests.minie.Demo.java
and tests.minie.DetectCitationDemo.java
.
If you use MinScIE in your work, please cite our paper:
@inproceedings{lauscher2019minscie,
title={MinScIE: Citation-centered Open Information Extraction},
author={Lauscher, Anne and Song, Yide and Gashteovski, Kiril},
booktitle={Proceedings of ACM/IEEE Joint Conference on Digital Libraries},
year={2019}
}