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Overview of Memotion 3: Sentiment and Emotion Analysis of Codemixed Hinglish Memes

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arxiv 2309.06517 v1 pith:YD34I3H6 submitted 2023-09-12 cs.CL

Overview of Memotion 3: Sentiment and Emotion Analysis of Codemixed Hinglish Memes

classification cs.CL
keywords taskmemesemotionmemotiondatasetfinaloverviewparticipants
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Analyzing memes on the internet has emerged as a crucial endeavor due to the impact this multi-modal form of content wields in shaping online discourse. Memes have become a powerful tool for expressing emotions and sentiments, possibly even spreading hate and misinformation, through humor and sarcasm. In this paper, we present the overview of the Memotion 3 shared task, as part of the DeFactify 2 workshop at AAAI-23. The task released an annotated dataset of Hindi-English code-mixed memes based on their Sentiment (Task A), Emotion (Task B), and Emotion intensity (Task C). Each of these is defined as an individual task and the participants are ranked separately for each task. Over 50 teams registered for the shared task and 5 made final submissions to the test set of the Memotion 3 dataset. CLIP, BERT modifications, ViT etc. were the most popular models among the participants along with approaches such as Student-Teacher model, Fusion, and Ensembling. The best final F1 score for Task A is 34.41, Task B is 79.77 and Task C is 59.82.

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