Neural semantic parsers usually generate meaning representation tokens from natural language tokens via an encoder-decoder model. However, there is often a vocabulary-mismatch problem between natural language utterances and logical forms. That is, one word maps to several atomic logical tokens, which need to be handled as a whole, rather than individual logical tokens at multiple steps. In this paper, we propose that the vocabulary-mismatch problem can be effectively resolved by leveraging appropriate logical tokens. Specifically, we exploit macro actions, which are of the same granularity of words/phrases, and allow the model to learn mappings from frequent phrases to corresponding sub-structures of meaning representation. Furthermore, mac...
Word embeddings learned on unlabeled data are a popular tool in semantics, but may not capture the d...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Neural semantic parsing has achieved impressive results in recent years, yet its success relies on t...
Neural semantic parsers usually fail to parse long and complex utterances into correct meaning repre...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
A semantic parser maps natural language commands (NLs) from the users to executable meaning represen...
In this work, we investigate the problems of semantic parsing in a few-shot learning setting. In thi...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
The recent prevalence of pretrained language models (PLMs) has dramatically shifted the paradigm of ...
Humans and computers do not speak the same language. A lot of day-to-day tasks would be vastly more ...
Deep transformer models have pushed performance on NLP tasks to new limits, suggesting sophisticated...
Word embeddings learned on unlabeled data are a popular tool in semantics, but may not capture the d...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Computational systems that learn to transform natural-language sentences into semantic representatio...
Neural semantic parsing has achieved impressive results in recent years, yet its success relies on t...
Neural semantic parsers usually fail to parse long and complex utterances into correct meaning repre...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
Neural methods have had several recent successes in semantic parsing, though they have yet to face t...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
A semantic parser maps natural language commands (NLs) from the users to executable meaning represen...
In this work, we investigate the problems of semantic parsing in a few-shot learning setting. In thi...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
The recent prevalence of pretrained language models (PLMs) has dramatically shifted the paradigm of ...
Humans and computers do not speak the same language. A lot of day-to-day tasks would be vastly more ...
Deep transformer models have pushed performance on NLP tasks to new limits, suggesting sophisticated...
Word embeddings learned on unlabeled data are a popular tool in semantics, but may not capture the d...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Computational systems that learn to transform natural-language sentences into semantic representatio...