Source code and datasets for IJCAI-2018 paper "Bootstrapping Entity Alignment with Knowledge Graph Embedding".
We use two datasets, namely DBP15K and DWY100K. DBP15K can be found here while DWY100K is as follows.
Folder "dataset/DWY100K/" contains the id files of DWY100K.
The subfolder "mapping/0_3" contains the id files used in BootEA and MTransE while the subfolder "sharing/0_3" is for JAPE and IPTransE. The two datasets use 30% reference entity alignment as seeds. Id files in "sharing/0_3" are generated following the idea of parameter sharing that lets the two aligned enitites in seed alignment share the same id, while "mapping/0_3" does not.
The subfolder "mapping/0_3" inculdes the following files:
- ent_ids_1: entity ids in the source KG;
- ent_ids_2: entity ids in the target KG;
- ref_ent_ids: entity alignment for testing, list of pairs like (e_s \t e_t);
- sup_ent_ids: seed entity alignment (training data);
- rel_ids_1: relation ids in the source KG;
- rel_ids_2: relation ids in the target KG;
- triples_1: relation triples in the source KG;
- triples_2: relation triples in the target KG;
The subfolder "sharing/0_3" inculdes the following additional files:
- attr_ids_1: attribute ids in the source KG;
- attr_ids_2: attribute ids in the target KG;
- attr_range_type_1: attribute ranges in the source KG, list of pairs like (attribute id \t range code);
- attr_range_type_2: attribute ranges in the target KG;
- ent_attrs_1: entity attributes in the source KG;
- ent_attrs_2: entity attributes in the target KG;
- ref_ents: seed entity alignment denoted by URIs (training data);
File "dataset/DWY100K_raw_data.zip" is the raw data of DWY100K, where each entity, relation or attribute is represented by a URI. Each dataset has the following files:
- ent_links: all the entity links without traning/test splits;
- triples_1: relation triples in the source KG, list of triples like (h \t r \t t);
- triples_2: relation triples in the target KG;
- attr_triples_1: attribute triples in the source KG;
- attr_triples_2: attribute triples in the target KG;
- uri_attr_range_type_1: attribute ranges in the source KG, list of pairs like (attribute uri \t range code);
- uri_attr_range_type_2: attribute ranges in the target KG;
- attrs_1: entity attributes in the source KG;
- attrs_2: entity attributes in the target KG;
Folder "code" contains all codes of BootEA, in which:
- "AlignE.py" is the implementation of AlignE;
- "BootEA.py" is the implementation of BootEA;
- "param.py" is the config file.
- Python 3
- Tensorflow 1.x
- Scipy
- Numpy
- Graph-tool or igraph or NetworkX
If you fail to install Graph-tool, we suggest you to set "self.heuristic = False" in param.py, which allows BootEA to run using igraph rather than Graph-tool. If you have trouble installing igraph, you can use NetworkX by modifying the code of line 186-189 in train_bp.py and replacing "mwgm_graph_tool" and "mwgm_igraph" with "mwgm_networkx". Note that, igraph and NetworkX are much slower than Graph-tool!
If you have any difficulty or question in running code and reproducing experiment results, please email to [email protected] and [email protected].
If you use this model or code, please cite it as follows:
@inproceedings{BootEA,
author = {Zequn Sun and Wei Hu and Qingheng Zhang and Yuzhong Qu},
title = {Bootstrapping Entity Alignment with Knowledge Graph Embedding},
booktitle = {IJCAI},
pages = {4396--4402},
year = {2018}
}
The following links point to some recent work that uses our datasets:
- Yixin Cao, et al. Multi-Channel Graph Neural Network for Entity Alignment. In: ACL 2019.
- Qiannan Zhu, et al. Neighborhood-Aware Attentional Representation for Multilingual Knowledge Graphs. In: IJCAI 2019.
- Qingheng Zhang, et al. Multi-view Knowledge Graph Embedding for Entity Alignment. In: IJCAI. 2019.
- Tingting Jiang, et al. Two-Stage Entity Alignment: Combining Hybrid Knowledge Graph Embedding with Similarity-Based Relation Alignment. In: PRICAI 2019.