AICLMay 4, 2023

Toward the Automated Construction of Probabilistic Knowledge Graphs for the Maritime Domain

arXiv:2305.02471v15 citations
AI Analysis

This work addresses the challenge of improving maritime security by integrating soft data, but it is incremental as it builds on existing knowledge graph extraction methods for a specific domain.

The paper tackles the problem of detecting maritime threats by proposing Maritime DeepDive, a prototype that automatically constructs probabilistic knowledge graphs from unstructured natural language data like intelligence reports, to extract entities, relations, and uncertainties. Preliminary results on maritime piracy incidents show promising performance when evaluated against a gold standard.

International maritime crime is becoming increasingly sophisticated, often associated with wider criminal networks. Detecting maritime threats by means of fusing data purely related to physical movement (i.e., those generated by physical sensors, or hard data) is not sufficient. This has led to research and development efforts aimed at combining hard data with other types of data (especially human-generated or soft data). Existing work often assumes that input soft data is available in a structured format, or is focused on extracting certain relevant entities or concepts to accompany or annotate hard data. Much less attention has been given to extracting the rich knowledge about the situations of interest implicitly embedded in the large amount of soft data existing in unstructured formats (such as intelligence reports and news articles). In order to exploit the potentially useful and rich information from such sources, it is necessary to extract not only the relevant entities and concepts but also their semantic relations, together with the uncertainty associated with the extracted knowledge (i.e., in the form of probabilistic knowledge graphs). This will increase the accuracy of and confidence in, the extracted knowledge and facilitate subsequent reasoning and learning. To this end, we propose Maritime DeepDive, an initial prototype for the automated construction of probabilistic knowledge graphs from natural language data for the maritime domain. In this paper, we report on the current implementation of Maritime DeepDive, together with preliminary results on extracting probabilistic events from maritime piracy incidents. This pipeline was evaluated on a manually crafted gold standard, yielding promising results.

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