![NLP Highlights artwork](https://is1-ssl.mzstatic.com/image/thumb/Podcasts127/v4/a8/49/90/a849903a-65af-d8fc-07a7-c0d1bbf826a6/mza_4767231250788281707.jpg/100x100bb.jpg)
59 - Weakly Supervised Semantic Parsing With Abstract Examples, with Omer Goldman
NLP Highlights
English - June 12, 2018 23:02 - 35 minutes - 80.2 MB - ★★★★★ - 22 ratingsScience Homepage Download Apple Podcasts Google Podcasts Overcast Castro Pocket Casts RSS feed
ACL 2018 paper by Omer Goldman, Veronica Latcinnik, Udi Naveh, Amir Globerson, and Jonathan Berant
Omer comes on to tell us about a class project (done mostly by undergraduates!) that made it into ACL. Omer and colleagues built a semantic parser that gets state-of-the-art results on the Cornell Natural Language Visual Reasoning dataset. They did this by using "abstract examples" - they replaced the entities in the questions and corresponding logical forms with their types, labeled about a hundred examples in this abstracted formalism, and used those labels to do data augmentation and train their parser. They also used some interesting caching tricks, and a discriminative reranker.
https://www.semanticscholar.org/paper/Weakly-supervised-Semantic-Parsing-with-Abstract-Goldman-Latcinnik/5aec2ab5bf2979da067e2aa34762b589a0680030