Interactively-Propagative Attention Learning for Implicit Discourse Relation Recognition
Huibin Ruan, Yu Hong, Yang Xu, Zhen Huang, Guodong Zhou, Min Zhang
Abstract
We tackle implicit discourse relation recognition. Both self-attention and interactive-attention mechanisms have been applied for attention-aware representation learning, which improves the current discourse analysis models. To take advantages of the two attention mechanisms simultaneously, we develop a propagative attention learning model using a cross-coupled two-channel network. We experiment on Penn Discourse Treebank. The test results demonstrate that our model yields substantial improvements over the baselines (BiLSTM and BERT).
Topics & Concepts
TreebankComputer scienceRelation (database)Representation (politics)Artificial intelligenceChannel (broadcasting)Natural language processingArtificial neural networkFeature learningMachine learningData miningDependency (UML)Political scienceLawComputer networkPoliticsTopic ModelingNatural Language Processing TechniquesDomain Adaptation and Few-Shot Learning