Implementations of RST discourse paring models represented in "Recursive Deep Models for Discourse Parsing" and "When Are Tree Structures Necessary for Deep Learning of Representations? ". Bi-directional LSTMs are applied to EDU sequences and Tree LSTMs are applied for tree construction.
GPU
matlab >= 2014b
For any pertinent question, feel free to contact jiweil@stanford.edu
##Folders Binary: a binary structure classifier to determine whether two adjacent text units should be merged to form a new subtree.
Multi: a multi-class classifier to determine which discourse relation label should be assigned to the new subtree.
Infer: Doing inference on testing dataset.
run binary/discourse_binary.m
run multi/discourse_multi.m
infer/Evaluation.m
download data,embeddings
@inproceedings{li2014recursive,
title={Recursive Deep Models for Discourse Parsing.},
author={Li, Jiwei and Li, Rumeng and Hovy, Eduard H},
booktitle={EMNLP},
pages={2061--2069},
year={2014}
}
@article{li2015tree,
title={When are tree structures necessary for deep learning of representations?},
author={Li, Jiwei and Jurafsky, Dan and Hovy, Eudard},
journal={arXiv preprint arXiv:1503.00185},
year={2015}
}