An animated picture says at least a thousand words: Selecting Gif-based Replies in Multimodal Dialog

Findings (EMNLP) 2021  ·  Xingyao Wang, David Jurgens ·

Online conversations include more than just text. Increasingly, image-based responses such as memes and animated gifs serve as culturally recognized and often humorous responses in conversation. However, while NLP has broadened to multimodal models, conversational dialog systems have largely focused only on generating text replies. Here, we introduce a new dataset of 1.56M text-gif conversation turns and introduce a new multimodal conversational model Pepe the King Prawn for selecting gif-based replies. We demonstrate that our model produces relevant and high-quality gif responses and, in a large randomized control trial of multiple models replying to real users, we show that our model replies with gifs that are significantly better received by the community.

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Datasets


Introduced in the Paper:

GIF Reply Dataset
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Multimodal GIF Dialog GIF Reply Dataset Pepe the King Prawn nDCG@10 0.8145 # 1

Methods


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