University of Lincoln
Browse

Towards Scientific Knowledge Graphs: Dependency Graph Analysis Using Graph Neural Networks for Extracting Scientific Relations

Download (9.11 MB)
journal contribution
posted on 2025-06-24, 11:34 authored by Ruowen Wu, Saeid Pourroostaei ArdakaniSaeid Pourroostaei Ardakani

    

Scientific relation extraction plays a crucial role in constructing scientific knowl- edge graphs that can contextually integrate knowledge from the scientific literature. How- ever, a large majority of existing efforts do not support human guidance, which hinders refining the construction of scientific knowledge graphs and, thus, the natural cycle of scientific knowledge integration. Therefore, there is a necessity to ground the human– machine collaboration in learned mechanisms, the prerequisite of which is quantifying the contribution of candidate mechanisms. In addressing this, we introduce an efficient summation node architecture by leveraging a graph neural network (GNN) on semantic patterns among dependency graphs. Then, we quantify the potential of different semantic invariance in serving as semantic interfaces towards the flexible construction of scientific knowledge graphs. Specifically, we posit that collocation-level patterns can enhance both extraction accuracy and F1 scores. Our proposed solutions exhibit promising performances for certain relations under bi-classification configurations, facilitating the learning of more semantic invariance from the word level to the collocation level. In conclusion, we assert that the flexible and robust construction of scientific knowledge graphs in the future will necessitate continual improvements to augment learned semantic invariance. This can be achieved through the development of more integrated and extended input graphs and transformer-based GNN architectures. 

History

School affiliated with

  • School of Engineering and Physical Sciences (Research Outputs)

Publication Title

electronics

Volume

14

Issue

11

Pages/Article Number

2276

Publisher

MDPI

Date Accepted

2025-05-30

Date of First Publication

2025-06-03

Open Access Status

  • Open Access

Will your conference paper be published in proceedings?

  • N/A

Usage metrics

    University of Lincoln (Research Outputs)

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC