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What is Learned in Visually Grounded Neural Syntax Acquisition

Authors :
Kojima, Noriyuki
Averbuch-Elor, Hadar
Rush, Alexander M.
Artzi, Yoav
Publication Year :
2020

Abstract

Visual features are a promising signal for learning bootstrap textual models. However, blackbox learning models make it difficult to isolate the specific contribution of visual components. In this analysis, we consider the case study of the Visually Grounded Neural Syntax Learner (Shi et al., 2019), a recent approach for learning syntax from a visual training signal. By constructing simplified versions of the model, we isolate the core factors that yield the model's strong performance. Contrary to what the model might be capable of learning, we find significantly less expressive versions produce similar predictions and perform just as well, or even better. We also find that a simple lexical signal of noun concreteness plays the main role in the model's predictions as opposed to more complex syntactic reasoning.<br />Comment: In ACL 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2005.01678
Document Type :
Working Paper