End-to-End Argument Mining for Discussion Threads Based on Parallel Constrained Pointer Architecture
About
Argument Mining (AM) is a relatively recent discipline, which concentrates on extracting claims or premises from discourses, and inferring their structures. However, many existing works do not consider micro-level AM studies on discussion threads sufficiently. In this paper, we tackle AM for discussion threads. Our main contributions are follows: (1) A novel combination scheme focusing on micro-level inner- and inter- post schemes for a discussion thread. (2) Annotation of large-scale civic discussion threads with the scheme. (3) Parallel constrained pointer architecture (PCPA), a novel end-to-end technique to discriminate sentence types, inner-post relations, and inter-post interactions simultaneously. The experimental results demonstrate that our proposed model shows better accuracy in terms of relations extraction, in comparison to existing state-of-the-art models.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Inter-Turn Relation Prediction | CMV QR data | Precision7.6 | 18 | |
| Intra-turn Relation Prediction | CMV (test) | Precision10 | 14 | |
| Argumentative Component Classification | CMV (test) | F1 (Claim)54.2 | 5 |