Semantic parsing is an important NLP problem, particularly for voice assistants such as Alexa and Google Assistant. State-of-the-art (SOTA) semantic parsers are seq2seq architectures based on large language models that have been pretrained on vast amounts of text. To better leverage that pretraining, recent work has explored a reformulation of semantic parsing whereby the output sequences are themselves natural language sentences, but in a controlled fragment of natural language. This approach delivers strong results, particularly for few-shot semantic parsing, which is of key importance in practice and the focus of our paper. We push this line of work forward by introducing an automated methodology that delivers very significant additional...
NLP has yielded results that were unimaginable only a few years ago on a wide range of real-world ta...
Deep learning methods have enabled task-oriented semantic parsing of increasingly complex utterances...
This thesis explores challenges in semantic parsing, specifically focusing on scenarios with limited...
Large language models can perform semantic parsing with little training data, when prompted with in-...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
We present a method for training a semantic parser using only a knowledge base and an unlabeled text...
In this work, we investigate the problems of semantic parsing in a few-shot learning setting. In thi...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
Semantic representation learning for sentences is an important and well-studied problem in NLP. The ...
This paper presents an empirical method for mapping speech input to shallow semantic representation....
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
NLP has yielded results that were unimaginable only a few years ago on a wide range of real-world ta...
Deep learning methods have enabled task-oriented semantic parsing of increasingly complex utterances...
This thesis explores challenges in semantic parsing, specifically focusing on scenarios with limited...
Large language models can perform semantic parsing with little training data, when prompted with in-...
How do we build a semantic parser in a new domain starting with zero training ex-amples? We introduc...
Semantic parsing is the task of translating natural language utterances onto machine-interpretable p...
For building question answering systems and natural lan-guage interfaces, semantic parsing has emerg...
We present a method for training a semantic parser using only a knowledge base and an unlabeled text...
In this work, we investigate the problems of semantic parsing in a few-shot learning setting. In thi...
Semantic parsing is the task of mapping a natural language sentence into a complete, formal meaning ...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
Semantic representation learning for sentences is an important and well-studied problem in NLP. The ...
This paper presents an empirical method for mapping speech input to shallow semantic representation....
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
NLP has yielded results that were unimaginable only a few years ago on a wide range of real-world ta...
Deep learning methods have enabled task-oriented semantic parsing of increasingly complex utterances...
This thesis explores challenges in semantic parsing, specifically focusing on scenarios with limited...