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Gaining More Insight into Neural Semantic Parsing with Challenging Benchmarks

Proceedings of the Fifth International Workshop on Designing Meaning Representations @ LREC-COLING 2024

DOI:10.63317/24bjfb77kpp9

Abstract

The Parallel Meaning Bank (PMB) serves as a corpus for semantic processing with a focus on semantic parsing and text generation. Currently, we witness an excellent performance of neural parsers and generators on the PMB. This might suggest that such semantic processing tasks have by and large been solved. We argue that this is not the case and that performance scores from the past on the PMB are inflated by non-optimal data splits and test sets that are too easy. In response, we introduce several changes. First, instead of the prior random split, we propose a more systematic splitting approach to improve the reliability of the standard test data. Second, except for the standard test set, we also propose two challenge sets: one with longer texts including discourse structure, and one that addresses compositional generalization. We evaluate five neural models for semantic parsing and meaning-to-text generation. Our results show that model performance declines (in some cases dramatically) on the challenge sets, revealing the limitations of neural models when confronting such challenges.

Details

Paper ID
lrec2024-ws-dmr-17
Pages
pp. 162-175
BibKey
zhang-etal-2024-gaining
Editor
N/A
Publisher
European Language Resources Association (ELRA) and ICCL
ISSN
N/A
ISBN
N/A
Workshop
Proceedings of the Fifth International Workshop on Designing Meaning Representations @ LREC-COLING 2024
Location
undefined, undefined
Date
20 May 2024 25 May 2024

Authors

  • XZ

    Xiao Zhang

  • CW

    Chunliu Wang

  • Rv

    Rik van Noord

  • JB

    Johan Bos

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