Relationship Prediction in a Knowledge Graph Embedding Model of the Illicit Antiquities Trade

Shawn Graham, Donna Yates*, Ahmed El-Roby, Chantal Brousseau, Jonah Ellens, Callum McDermott

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

The transnational networks of the illicit and illegal antiquities trade are hard to perceive. We suggest representing the trade as a knowledge graph with multiple kinds of relationships that can be transformed by a neural architecture into a "knowledge graph embedding model." The result is that the vectorization of the knowledge represented in the graph can be queried for missing "knowledge" of the trade by virtue of the various entities' proximity in the multidimensional embedding space. In this article, we build a knowledge graph about the antiquities trade using a semantic annotation tool, drawing on the series of articles in the Trafficking Culture Project's online encyclopedia. We then use the AmpliGraph package, a series of tools for supervised machine learning (Costabello et al. 2019) to turn the graph into a knowledge graph embedding model. We query the model to predict new hypotheses and to cluster actors in the trade. The model suggests connections between actors and institutions hitherto unsuspected and not otherwise present in the original knowledge graph. This approach could hold enormous potential for illuminating the hidden corners of the illicit antiquities trade. The same method could be applied to other kinds of archaeological knowledge.
Original languageEnglish
Article numberPII S2326376823000013
Pages (from-to)126-138
Number of pages13
JournalAdvances in Archaeological Practice
Volume11
Issue number2
DOIs
Publication statusPublished - 1 May 2023

Keywords

  • knowledge graph
  • embedding models
  • illicit antiquities trade
  • link prediction
  • networks

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