Key points are not available for this paper at this time.
Neural semantic parsing maps natural languages (NL) to equivalent formal semantics which are compositional and deduce the sentence meanings by composing smaller parts. To learn a well-defined semantics, semantic parsers must recognize small parts, which are semantic mappings between NL and semantic tokens. Attentions in recent neural models are usually explained as one-on-one semantic mappings. However, attention weights with end-to-end training are shown only weakly correlated with human-labeled mappings. Despite the usefulness, supervised mappings are expensive. We propose the unsupervised Hungarian tweaks on attentions to better model mappings. Experiments have shown our methods is competitive with the supervised approach on performance and mappings recognition, and outperform other baselines.
Zhang et al. (Mon,) studied this question.