MemeGraphs: Linking Memes to Knowledge Graphs
Memes are a popular form of communicating trends and ideas in social media and on the internet in general, combining the modalities of images and text. They can express humor and sarcasm but can also have offensive content. Analyzing and classifying memes automatically is challenging since their interpretation relies on the understanding of visual elements, language, and background knowledge. Thus, it is important to meaningfully represent these sources and the interaction between them in order to classify a meme as a whole. In this work, we propose to use scene graphs, that express images in terms of objects and their visual relations, and knowledge graphs as structured representations for meme classification with a Transformer-based architecture. We compare our approach with ImgBERT, a multimodal model that uses only learned (instead of structured) representations of the meme, and observe consistent improvements. We further provide a dataset with human graph annotations that we compare to automatically generated graphs and entity linking. Analysis shows that automatic methods link more entities than human annotators and that automatically generated graphs are better suited for hatefulness classification in memes.
Top- Kougia, Vasiliki
- Fetzel, Simon
- Kirchmair, Thomas
- Çano, Erion
- Baharlou, Sina Moayed
- Sharifzadeh, Sahand
- Roth, Benjamin
Category |
Paper in Conference Proceedings or in Workshop Proceedings (Paper) |
Event Title |
The 17th International Conference on Document Analysis and Recognition (ICDAR 2023) |
Divisions |
Data Mining and Machine Learning |
Subjects |
Kuenstliche Intelligenz |
Event Location |
San José, California, USA |
Event Type |
Conference |
Event Dates |
21-26 August 2023 |
Series Name |
Document Analysis and Recognition ICDAR 2023 |
ISSN/ISBN |
978-3-031-41676-7 |
Page Range |
pp. 534-551 |
Date |
2023 |
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