Decoding Memes: Benchmarking Narrative Role Classification across Multilingual and Multimodal Models
Journal:
arXiv
Published Date:
Jun 29, 2025
Abstract
This work investigates the challenging task of identifying narrative roles -
Hero, Villain, Victim, and Other - in Internet memes, across three diverse test
sets spanning English and code-mixed (English-Hindi) languages. Building on an
annotated dataset originally skewed toward the 'Other' class, we explore a more
balanced and linguistically diverse extension, originally introduced as part of
the CLEF 2024 shared task. Comprehensive lexical and structural analyses
highlight the nuanced, culture-specific, and context-rich language used in real
memes, in contrast to synthetically curated hateful content, which exhibits
explicit and repetitive lexical markers. To benchmark the role detection task,
we evaluate a wide spectrum of models, including fine-tuned multilingual
transformers, sentiment and abuse-aware classifiers, instruction-tuned LLMs,
and multimodal vision-language models. Performance is assessed under zero-shot
settings using precision, recall, and F1 metrics. While larger models like
DeBERTa-v3 and Qwen2.5-VL demonstrate notable gains, results reveal consistent
challenges in reliably identifying the 'Victim' class and generalising across
cultural and code-mixed content. We also explore prompt design strategies to
guide multimodal models and find that hybrid prompts incorporating structured
instructions and role definitions offer marginal yet consistent improvements.
Our findings underscore the importance of cultural grounding, prompt
engineering, and multimodal reasoning in modelling subtle narrative framings in
visual-textual content.