Learning Semantic Parsers from Denotations with Latent Structured Alignments and Abstract Programs
Semantic parsing aims to map natural language utterances onto machine interpretable meaning representations, aka programs whose execution against a real-world environment produces a denotation. Weakly-supervised semantic parsers are trained on utterance-denotation pairs treating programs as latent....
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
09.09.2019
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Subjects | |
Online Access | Get full text |
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Summary: | Semantic parsing aims to map natural language utterances onto machine
interpretable meaning representations, aka programs whose execution against a
real-world environment produces a denotation. Weakly-supervised semantic
parsers are trained on utterance-denotation pairs treating programs as latent.
The task is challenging due to the large search space and spuriousness of
programs which may execute to the correct answer but do not generalize to
unseen examples. Our goal is to instill an inductive bias in the parser to help
it distinguish between spurious and correct programs. We capitalize on the
intuition that correct programs would likely respect certain structural
constraints were they to be aligned to the question (e.g., program fragments
are unlikely to align to overlapping text spans) and propose to model
alignments as structured latent variables. In order to make the
latent-alignment framework tractable, we decompose the parsing task into (1)
predicting a partial "abstract program" and (2) refining it while modeling
structured alignments with differential dynamic programming. We obtain
state-of-the-art performance on the WIKITABLEQUESTIONS and WIKISQL datasets.
When compared to a standard attention baseline, we observe that the proposed
structured-alignment mechanism is highly beneficial. |
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DOI: | 10.48550/arxiv.1909.04165 |