representation modelling. In this paper, we focus on few-shot learning of emerging concepts
that fully exploits only a few available contexts. We introduce a substitute-based context
representation technique that can be applied on an existing word embedding space.
Previous context-based approaches to modelling unseen words only consider bag-of-word
firstorder contexts, whereas our method aggregates contexts as second-order substitutes …