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Evaluating the Representational Hub of Language and Vision Models

Authors :
Shekhar, Ravi
Takmaz, Ece
Fernández, Raquel
Bernardi, Raffaella
Publication Year :
2019

Abstract

The multimodal models used in the emerging field at the intersection of computational linguistics and computer vision implement the bottom-up processing of the `Hub and Spoke' architecture proposed in cognitive science to represent how the brain processes and combines multi-sensory inputs. In particular, the Hub is implemented as a neural network encoder. We investigate the effect on this encoder of various vision-and-language tasks proposed in the literature: visual question answering, visual reference resolution, and visually grounded dialogue. To measure the quality of the representations learned by the encoder, we use two kinds of analyses. First, we evaluate the encoder pre-trained on the different vision-and-language tasks on an existing diagnostic task designed to assess multimodal semantic understanding. Second, we carry out a battery of analyses aimed at studying how the encoder merges and exploits the two modalities.<br />Comment: Accepted to IWCS 2019

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1904.06038
Document Type :
Working Paper