Improving Implicit Discourse Relation Classification by Modeling Inter-dependencies of Discourse Units in a Paragraph
About
We argue that semantic meanings of a sentence or clause can not be interpreted independently from the rest of a paragraph, or independently from all discourse relations and the overall paragraph-level discourse structure. With the goal of improving implicit discourse relation classification, we introduce a paragraph-level neural networks that model inter-dependencies between discourse units as well as discourse relation continuity and patterns, and predict a sequence of discourse relations in a paragraph. Experimental results show that our model outperforms the previous state-of-the-art systems on the benchmark corpus of PDTB.
Zeyu Dai, Ruihong Huang• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Top-level Implicit Discourse Relation Recognition | PDTB 2.0 (Ji split) | F1 Score52.89 | 61 | |
| Second-level Implicit Discourse Relation Recognition | PDTB 2.0 (Ji split) | Accuracy48.23 | 54 | |
| Implicit Discourse Relation Recognition | PDTB 2.0 | Top-level Macro F148.82 | 14 | |
| Explicit Discourse Relation Recognition | PDTB 2.0 (test) | Accuracy94.46 | 9 |
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