loading page

Label-Guided Scientific Abstract Generation with a Siamese Network Using Knowledge Graphs
  • Haotong Wang,
  • Yves Lepage
Haotong Wang
Waseda University

Corresponding Author:[email protected]

Author Profile
Yves Lepage
Waseda University
Author Profile

Abstract

Knowledge graphs convey precise semantic information that can be effectively interpreted by neural networks, and generating descriptive text based on these graphs places significant emphasis on content consistency. However, knowledge graphs are inadequate for providing additional linguistic features such as paragraph structure and expressive modes, making it challenging to ensure content coherence in generating text that spans multiple sentences. This lack of coherence can further compromise the overall consistency of the content within a paragraph. In this work, we present the generation of scientific abstracts by leveraging knowledge graphs, with a focus on enhancing both content consistency and coherence. In particular, we construct the ACL Abstract Graph Dataset (ACL-AGD) which pairs knowledge graphs with text, incorporating sentence labels to guide text structure and diverse expressions. We then implement a Siamese network to complement and concretize the entities and relations based on paragraph structure by accomplishing two tasks: graph-to-text generation and entity alignment. Extensive experiments demonstrate that the logical paragraphs generated by our method exhibit entities with a uniform position distribution and appropriate frequency. In terms of content, our method accurately represents the information encoded in the knowledge graph, prevents the generation of irrelevant content, and achieves coherent and non-redundant adjacent sentences, even with a shared knowledge graph.
03 Aug 2024Submitted to Expert Systems
04 Aug 2024Submission Checks Completed
04 Aug 2024Assigned to Editor
13 Sep 2024Reviewer(s) Assigned
04 Nov 2024Review(s) Completed, Editorial Evaluation Pending