ASER_AMIE
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A Python pipeline for using AMIE+ to mine logic rules and instantiate new facts.
ASER_AMIE
A Python pipeline for using AMIE+ to mine logic rules and instantiate new facts. Initially designed for mining new relations for ASER
Settings and Dependencies:
- Python 3.7
- AMIE+
Usage:
- Show help message and descriptions of arguments
python pipeline.py -h
- Run the whole pipeline (Only for ASER Knowledge Graph):
python pipeline.py -wp --row_triples /path/to/row_triples.tsv --db_path DB_PATH /path/to/KG.db --amie_plus_path /path/to/AMIE+.jar --new_prediction_path /path/to/new_prediction.tsv
With this command, the pipeline will first extract RDF triples from ASER format database into .tsv file. Then it will run AMIE+ on the .tsv file to mine all logical rules within preset threshold. Finally it will instantiate new RDF facts by grounding the mined rules to orignal triples.
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Run pipeline for other knowledge base:
- Mine logical rules with AMIE+:
python pipeline.py -m --row --row_triples /path/to/row_triples.tsv --amie_plus_path /path/to/AMIE+.jar
The mined rules will be sorted according to the PCA and STD confidence repectively and saved in "pca_sorted_rule.tsv" and "std_sorted_rule.tsv" in the module directory.
- Predict/Instantiate new facts with mined/provided rules:
python pipeline.py -p --rule_path /path/to/rule_you_provide.tsv --row_triples /path/to/row_triples.tsv ----new_prediction_path /path/to/new_prediction.tsv