Coupling Retrieval and Meta-Learning for Context-Dependent Semantic Parsing
Abstract
In this paper, we present an approach to incorporate retrieved datapoints as supporting evidence for context-dependent semantic parsing, such as generating source code conditioned on the class environment. Our approach naturally combines a retrieval model and a meta-learner, where the former learns to find similar datapoints from the training data, and the latter considers retrieved datapoints as a pseudo task for fast adaptation. Specifically, our retriever is a context-aware encoder-decoder model with a latent variable which takes context environment into consideration, and our meta-learner learns to utilize retrieved datapoints in a model-agnostic meta-learning paradigm for fast adaptation. We conduct experiments on CONCODE and CSQA datasets, where the context refers to class environment in JAVA codes and conversational history, respectively. We use sequence-to-action model as the base semantic parser, which performs the state-of-the-art accuracy on both datasets. Results show that both the context-aware retriever and the meta-learning strategy improve accuracy, and our approach performs better than retrieve-and-edit baselines.
Cite
@article{arxiv.1906.07108,
title = {Coupling Retrieval and Meta-Learning for Context-Dependent Semantic Parsing},
author = {Daya Guo and Duyu Tang and Nan Duan and Ming Zhou and Jian Yin},
journal= {arXiv preprint arXiv:1906.07108},
year = {2019}
}
Comments
Accepted by ACL 2019