Detecting text level intellectual influence with knowledge graph embeddings
- URL: http://arxiv.org/abs/2410.24021v1
- Date: Thu, 31 Oct 2024 15:21:27 GMT
- Title: Detecting text level intellectual influence with knowledge graph embeddings
- Authors: Lucian Li, Eryclis Silva,
- Abstract summary: We collect a corpus of open source journal articles and generate Knowledge Graph representations using the Gemini LLM.
We attempt to predict the existence of citations between sampled pairs of articles using previously published methods and a novel Graph Neural Network based embedding model.
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- Abstract: Introduction: Tracing the spread of ideas and the presence of influence is a question of special importance across a wide range of disciplines, ranging from intellectual history to cultural analytics, computational social science, and the science of science. Method: We collect a corpus of open source journal articles, generate Knowledge Graph representations using the Gemini LLM, and attempt to predict the existence of citations between sampled pairs of articles using previously published methods and a novel Graph Neural Network based embedding model. Results: We demonstrate that our knowledge graph embedding method is superior at distinguishing pairs of articles with and without citation. Once trained, it runs efficiently and can be fine-tuned on specific corpora to suit individual researcher needs. Conclusion(s): This experiment demonstrates that the relationships encoded in a knowledge graph, especially the types of concepts brought together by specific relations can encode information capable of revealing intellectual influence. This suggests that further work in analyzing document level knowledge graphs to understand latent structures could provide valuable insights.
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