Automated Construction Method of Knowledge Graphs for Pirate Events

Author:

Xie Cunxiang1,Zhong Zhaogen2,Zhang Limin1

Affiliation:

1. Department of Information Fusion, Naval Aviation University, Yantai 264001, China

2. The School of Aviation Basis, Naval Aviation University, Yantai 264001, China

Abstract

With the development of seaborne trade, international maritime crime is becoming increasingly complex. Detecting maritime threats by fusing the physical movement data from traditional physical sensors is not sufficient. Thus, soft data, including intelligence reports and news articles, need to be incorporated into the situational awareness models of maritime threats. In this regard, this study developed an automated construction method of knowledge graphs for pirate events, which lays a foundation for subsequent maritime threat reasoning and situational awareness. First, a knowledge graph ontology model for pirate events was designed. Secondly, the BERT-BiLSTM-CRF model is proposed for named-entity recognition, and an entity linking algorithm based on distant learning and context attention mechanism is proposed to remove the conceptual ambiguity. Thirdly, based on traditional distant supervision relation extraction, which is based on sentence-level attention mechanism, bag-level and group-level attention mechanism methods are additionally proposed to further enhance the performance of distant supervision relation extraction. The proposed model demonstrated high performance in named-entity recognition, entity linking, and relation extraction tasks, with an overall F1-score of over 0.94 for NER and significant improvements in entity linking and relation extraction compared to traditional methods. The constructed knowledge graphs effectively support maritime threat reasoning and situational awareness, offering a substantial contribution to the field of maritime security. Our discussion highlights the model’s strengths and potential areas for future work, while the conclusion emphasizes the practical implications and the readiness of our approach for real-world applications.

Funder

National Natural Science Foundation of China

Taishan Scholar Project of Shandong Province

Chinese National Key Laboratory of Science and Technology on Information System Security

Publisher

MDPI AG

Reference57 articles.

1. The political economy of piracy in the south China sea;Rosenberg;Nav. War Coll. Rev.,2009

2. Hurlburt, K. (2013). The human cost of somali piracy. Piracy at Sea, Springer.

3. Jin, J., and Techera, E. (2021). Strengthening Universal Jurisdiction for Maritime Piracy Trials to Enhance a Sustainable Anti-Piracy Legal System for Community Interests. Sustainability, 13.

4. Song, H., Gi, I., Ryu, J., Kwon, Y., and Jeong, J. (2023). Production Planning Forecasting System Based on M5P Algorithms and Master Data in Manufacturing Processes. Appl. Sci., 13.

5. Núñez, R.C., Samarakoon, B., Premaratne, K., and Murthi, M.N. (2013, January 9–12). Hard and soft data fusion for joint tracking and classification/intent detection. Proceedings of the 16th International Conference on Information Fusion, Istanbul, Turkey.

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