From Argumentative Text to Argument Knowledge Graph: A New Framework for Structured Argumentation

This paper presents a framework to convert argumentative texts into argument knowledge graphs (AKG). Starting with basic annotations of argumentative components (ACs) and argumentative relations (ARs), we enrich the information by constructing a knowledge base (KB) graph with metadata attributes for nodes. Next, we use premises and inference rules from the KB to form arguments by applying modus ponens. From these arguments, we create an AKG. The nodes and edges of the AKG have attributes that capture important argumentative features. We also find missing inference rules by identifying markers. This makes it possible to identify undercut attacks that were previously undetectable in existing datasets. The AKG gives a graphical view of the argumentative structure that is easier to understand than theoretical formats. It also prepares the ground for future reasoning tasks, including checking the coherence of arguments and identifying opportunities for revision. For this, it is important to find indirect relations, many of which are implicit. Our proposed AKG format, with annotated inference rules and modus ponens, will help reasoning models learn the implicit indirect relations that require inference over arguments and the relations between them.
View on arXiv@article{bhattacharjee2025_2506.00713, title={ From Argumentative Text to Argument Knowledge Graph: A New Framework for Structured Argumentation }, author={ Debarati Bhattacharjee and Ashish Anand }, journal={arXiv preprint arXiv:2506.00713}, year={ 2025 } }