Efrat Blaier


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2021

pdf bib
Caption Enriched Samples for Improving Hateful Memes Detection
Efrat Blaier | Itzik Malkiel | Lior Wolf
Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing

The recently introduced hateful meme challenge demonstrates the difficulty of determining whether a meme is hateful or not. Specifically, both unimodal language models and multimodal vision-language models cannot reach the human level of performance. Motivated by the need to model the contrast between the image content and the overlayed text, we suggest applying an off-the-shelf image captioning tool in order to capture the first. We demonstrate that the incorporation of such automatic captions during fine-tuning improves the results for various unimodal and multimodal models. Moreover, in the unimodal case, continuing the pre-training of language models on augmented and original caption pairs, is highly beneficial to the classification accuracy.