Probing Linguistic Systematicity
Abstract
Recently, there has been much interest in the question of whether deep natural language understanding models exhibit systematicity; generalizing such that units like words make consistent contributions to the meaning of the sentences in which they appear. There is accumulating evidence that neural models often generalize non-systematically. We examined the notion of systematicity from a linguistic perspective, defining a set of probes and a set of metrics to measure systematic behaviour. We also identified ways in which network architectures can generalize non-systematically, and discuss why such forms of generalization may be unsatisfying. As a case study, we performed a series of experiments in the setting of natural language inference (NLI), demonstrating that some NLU systems achieve high overall performance despite being non-systematic.
Cite
@article{arxiv.2005.04315,
title = {Probing Linguistic Systematicity},
author = {Emily Goodwin and Koustuv Sinha and Timothy J. O'Donnell},
journal= {arXiv preprint arXiv:2005.04315},
year = {2020}
}
Comments
To appear at ACL2020, 9 pages, 2 figures