Scalable Semantic Parsing with Partial Ontologies

Eunsol Choi, Tom Kwiatkowski, Luke Zettlemoyer


Abstract

We consider the problem of building scalable Freebase semantic parsers, and present a new approach for learning to do partial analyses that ground as much of the input text as possible without requiring that all content words be mapped to Freebase concepts. We study this problem on two newly introduced large-scale noun phrase datasets, and introduce a new semantic parsing model and semi-supervised learning approach for reasoning with partial ontological support. Experiments demonstrate strong performance on two tasks: referring expression resolution and entity attribute extraction. In both cases, the partial analyses allow us to improve precision over strong baselines, while parsing many phrases that would be ignored by existing techniques.