MMCLSep 11, 2021

MOMENTA: A Multimodal Framework for Detecting Harmful Memes and Their Targets

arXiv:2109.05184v2684 citations
Originality Incremental advance
AI Analysis

It addresses the challenge of general harm detection in memes for online safety, though it is incremental by extending a dataset and applying a novel multimodal method.

The paper tackles the problem of detecting harmful memes and identifying their targets, proposing the MOMENTA framework which outperforms existing methods in experiments.

Internet memes have become powerful means to transmit political, psychological, and socio-cultural ideas. Although memes are typically humorous, recent days have witnessed an escalation of harmful memes used for trolling, cyberbullying, and abuse. Detecting such memes is challenging as they can be highly satirical and cryptic. Moreover, while previous work has focused on specific aspects of memes such as hate speech and propaganda, there has been little work on harm in general. Here, we aim to bridge this gap. We focus on two tasks: (i)detecting harmful memes, and (ii)identifying the social entities they target. We further extend a recently released HarMeme dataset, which covered COVID-19, with additional memes and a new topic: US politics. To solve these tasks, we propose MOMENTA (MultimOdal framework for detecting harmful MemEs aNd Their tArgets), a novel multimodal deep neural network that uses global and local perspectives to detect harmful memes. MOMENTA systematically analyzes the local and the global perspective of the input meme (in both modalities) and relates it to the background context. MOMENTA is interpretable and generalizable, and our experiments show that it outperforms several strong rivaling approaches.

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