Distributional Modeling on a Diet: One-shot Word Learning from Text Only
arXiv:1704.04550
Abstract
We test whether distributional models can do one-shot learning of definitional properties from text only. Using Bayesian models, we find that first learning overarching structure in the known data, regularities in textual contexts and in properties, helps one-shot learning, and that individual context items can be highly informative. Our experiments show that our model can learn properties from a single exposure when given an informative utterance.
The 8th International Joint Conference on Natural Language Processing (IJCNLP 2017)