Multi Modal Analysis of memes for Sentiment extraction

Nayan Varma Alluri, Neeli Dheeraj Krishna
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引用次数: 4

Abstract

Memes are one of the most ubiquitous forms of social media communication. The study and processing of memes, which are intrinsically multimedia, is a popular topic right now. The study presented in this research is based on the Memotion dataset, which involves categorising memes based on irony, comedy, motivation, and overall-sentiment. Three separate innovative transformer-based techniques have been developed, and their outcomes have been thoroughly reviewed.The best algorithm achieved a macro F1 score of 0.633 for humour classification, 0.55 for motivation classification, 0.61 for sarcasm classification, and 0.575 for overall sentiment of the meme out of all our techniques.
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情感提取模因的多模态分析
表情包是社交媒体交流中最普遍的形式之一。模因本质上是多媒体的,对模因的研究和处理是当前的热门话题。本研究中提出的研究基于Memotion数据集,其中包括根据讽刺、喜剧、动机和整体情绪对模因进行分类。已经开发了三种独立的基于变压器的创新技术,并对其结果进行了全面审查。在我们所有的技术中,最好的算法在幽默分类上的宏观F1得分为0.633,在动机分类上的F1得分为0.55,在讽刺分类上的F1得分为0.61,在模因的整体情绪上的F1得分为0.575。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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