Graph Ensemble Learning over Multiple Dependency Trees for Aspect-level Sentiment Classification
Abstract
Recent work on aspect-level sentiment classification has demonstrated the efficacy of incorporating syntactic structures such as dependency trees with graph neural networks(GNN), but these approaches are usually vulnerable to parsing errors. To better leverage syntactic information in the face of unavoidable errors, we propose a simple yet effective graph ensemble technique, GraphMerge, to make use of the predictions from differ-ent parsers. Instead of assigning one set of model parameters to each dependency tree, we first combine the dependency relations from different parses before applying GNNs over the resulting graph. This allows GNN mod-els to be robust to parse errors at no additional computational cost, and helps avoid overparameterization and overfitting from GNN layer stacking by introducing more connectivity into the ensemble graph. Our experiments on the SemEval 2014 Task 4 and ACL 14 Twitter datasets show that our GraphMerge model not only outperforms models with single dependency tree, but also beats other ensemble mod-els without adding model parameters.
Cite
@article{arxiv.2103.11794,
title = {Graph Ensemble Learning over Multiple Dependency Trees for Aspect-level Sentiment Classification},
author = {Xiaochen Hou and Peng Qi and Guangtao Wang and Rex Ying and Jing Huang and Xiaodong He and Bowen Zhou},
journal= {arXiv preprint arXiv:2103.11794},
year = {2021}
}
Comments
Accepted by NAACL 2021