Understanding Humorous Contradictions in Comics: A Multi-Agent Debate Approach
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Date
2025-07-12
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Publisher
Indian Statistical Institute, Kolkata
Abstract
Recent advancements in large language models (LLMs) have demonstrated impressive reasoning
capabilities, yet their ability to understand and generate nuanced humor—particularly in
contexts involving juxtaposition and contradictory narratives—remains a significant challenge.
This thesis explores the application of advanced reasoning techniques, specifically multi-agent
debate, to enhance LLMs’ performance in understanding and interpreting humor derived from
juxtaposed comic panels. .
Leveraging the YesBut benchmark—a dataset designed to evaluate AI models on tasks ranging
from literal description generation to deep narrative reasoning, we explore how multi-agent
debate can address key limitations in current models, such as visual misinterpretation,
reasoning gaps, and hallucination. By simulating collaborative critique among multiple
AI agents, our approach encourages more robust reasoning, enabling models to better resolve
contradictions, infer underlying philosophies, and generate coherent, contextually appropriate
humor.
Our experiments demonstrate that multi-agent debate not only improves accuracy in humor
comprehension tasks but also enhances the model’s ability to generalize across diverse creative
expressions. This work advances the development of socially intelligent AI systems capable of
nuanced, human-like understanding of humor and creative narratives. The findings highlight
the potential of multi-agent reasoning frameworks to bridge the gap between AI and humanlevel
humor interpretation, paving the way for more sophisticated applications in automated
content generation, entertainment, and human-AI
Description
Dissertation under the supervision of Dr. Malay Bhattacharyya and Dr. Anirban Mukhopadhyay
Keywords
LLM. Agentic AI, Multi-agent debate
Citation
33p.
