Towards an Implementation of Rhetorical Structure Theory in Discourse Coherence Modelling
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Lambropoulos, Michael
Ishihara, Shunichi
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Association for Computational Linguistics (ACL)
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Abstract
In this paper, we combine the discourse coherence principles of Elementary Discourse Unit segmentation and Rhetorical Structure Theory parsing to construct meaningful graph-based text representations. We then evaluate a Graph Convolutional Network and a Graph Attention Network on these representations. Our results establish a new benchmark in F1-score assessment for discourse coherence modelling while also showing that Graph Convolutional Network models are generally more computationally efficient and provide superior accuracy.
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Proceedings of the 22nd Annual Workshop of the Australasian Language Technology Association
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