stanford-openie-python
Relation extractor
Provides a Python interface to extract structured relation triples from plain text using CoreNLP's open information extraction system.
Stanford Open Information Extraction made simple!
639 stars
12 watching
103 forks
Language: Python
last commit: almost 2 years ago extractionnlppython-wrapperstanfordstanford-openie
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