Improving Grammar-based Sequence-to-Sequence Modeling with Decomposition and Constraints
Computation and Language
2023-06-06 v1
Abstract
Neural QCFG is a grammar-based sequence-tosequence (seq2seq) model with strong inductive biases on hierarchical structures. It excels in interpretability and generalization but suffers from expensive inference. In this paper, we study two low-rank variants of Neural QCFG for faster inference with different trade-offs between efficiency and expressiveness. Furthermore, utilizing the symbolic interface provided by the grammar, we introduce two soft constraints over tree hierarchy and source coverage. We experiment with various datasets and find that our models outperform vanilla Neural QCFG in most settings.
Cite
@article{arxiv.2306.02671,
title = {Improving Grammar-based Sequence-to-Sequence Modeling with Decomposition and Constraints},
author = {Chao Lou and Kewei Tu},
journal= {arXiv preprint arXiv:2306.02671},
year = {2023}
}
Comments
ACL 2023