AICLLGDec 11, 2022

Multimodal and Explainable Internet Meme Classification

arXiv:2212.05612v38 citationsh-index: 12
Originality Incremental advance
AI Analysis

This addresses the challenge of fair content moderation at scale for online platforms, though it is incremental as it builds on existing tasks and models.

The paper tackles the problem of harmful Internet meme classification by developing modular and explainable multimodal methods that use example- and prototype-based reasoning, achieving performance comparisons across text, vision, and multimodal models on tasks like Hate Speech Detection and Misogyny Classification.

In the current context where online platforms have been effectively weaponized in a variety of geo-political events and social issues, Internet memes make fair content moderation at scale even more difficult. Existing work on meme classification and tracking has focused on black-box methods that do not explicitly consider the semantics of the memes or the context of their creation. In this paper, we pursue a modular and explainable architecture for Internet meme understanding. We design and implement multimodal classification methods that perform example- and prototype-based reasoning over training cases, while leveraging both textual and visual SOTA models to represent the individual cases. We study the relevance of our modular and explainable models in detecting harmful memes on two existing tasks: Hate Speech Detection and Misogyny Classification. We compare the performance between example- and prototype-based methods, and between text, vision, and multimodal models, across different categories of harmfulness (e.g., stereotype and objectification). We devise a user-friendly interface that facilitates the comparative analysis of examples retrieved by all of our models for any given meme, informing the community about the strengths and limitations of these explainable methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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