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To achieve the long-term goal of machines being able to engage humans in conversation, our models should captivate the interest of their speaking partners.Communication grounded in images, whereby a dialogue is conducted based on a given photo, is a setup naturally appealing to humans (Hu et al., 2014).In this work we study large-scale architectures and datasets for this goal.We test a set of neural architectures using state-of-the-art image and text representations, considering various ways to fuse the components.To test such models, we collect a dataset of grounded human-human conversations, where speakers are asked to play roles given a provided emotional mood or style, as the use of such traits is also a key factor in engagingness (Guo et al., 2019).Our dataset, Image-Chat, consists of 202k dialogues over 202k images using 215 possible style traits.Automatic metrics and human evaluations of engagingness show the efficacy of our approach; in particular, we obtain state-of-the-art performance on the existing IGC task, and our best performing model is almost on par with humans on the Image-Chat test set (preferred 47.7% of the time).
Shuster et al. (Wed,) studied this question.
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