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- Title
Entity Disambiguation with Markov Logic Network Knowledge Graphs.
- Authors
Jiangtao Ma; Tao Wei; Yaqiong Qiao; Yongzhong Huang; Weibo Xie; Chaoqin Zhang; Yanjun Wang; Rui Zhang
- Abstract
Disambiguating named entities is an important problem in natural language processing, knowledge base, question answering systems. In the paper, we propose a Markov logic network knowledge graph solution for solving entity resolution problem. First, we employ knowledge graph to represent the entity relationship between linked entities in the knowledge base. Then, we utilize MLN to inference the inconsistent relationship in the knowledge graph, and disambiguate the entities in the process of entity disambiguation. As far as we know, inferencing with MLN is a first attempt for entity disambiguation in the knowledge graph. We evaluate the proposed solution with three real world knowledge bases and compare it with four baseline solutions. The experimental results demonstrate that our solution is 7% higher than other baseline methods with F1 measure. We also test our scheme and compare entity resolution systems on four datasets with three knowledge base corpora. Extensive experiments show that our solution achieves higher precision and recall than baseline solutions.
- Subjects
NATURAL language processing; MARKOV processes; KNOWLEDGE management; GRAPH theory; BASELINE assessment (Education)
- Publication
International Journal of Performability Engineering, 2017, Vol 13, Issue 8, p1293
- ISSN
0973-1318
- Publication type
Article
- DOI
10.23940/ijpe.17.08.p11.12931303