POEM: Interactive Prompt Optimization for Enhancing Multimodal Reasoning of Large Language Models

Large language models (LLMs) have exhibited impressive abilities for multimodal content comprehension and reasoning with proper prompting in zero- or few-shot settings. Despite the proliferation of interactive systems developed to support prompt engineering for LLMs across various tasks, most have p...

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Bibliographic Details
Published inIEEE Pacific Visualization Symposium pp. 36 - 46
Main Authors He, Jianben, Wang, Xingbo, Liu, Shiyi, Wu, Guande, Silva, Claudio, Qu, Huamin
Format Conference Proceeding
LanguageEnglish
Published IEEE 22.04.2025
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ISSN2165-8773
DOI10.1109/PacificVis64226.2025.00010

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Summary:Large language models (LLMs) have exhibited impressive abilities for multimodal content comprehension and reasoning with proper prompting in zero- or few-shot settings. Despite the proliferation of interactive systems developed to support prompt engineering for LLMs across various tasks, most have primarily focused on textual or visual inputs, thus neglecting the complex interplay between modalities in multimodal inputs. This oversight hinders the development of effective prompts that guide models' multimodal reasoning processes by fully exploiting the rich context provided by multiple modalities. In this paper, we present POEM, a visual analytics system to facilitate efficient prompt engineering for steering the multimodal reasoning performance of LLMs. The system enables users to explore the interaction patterns across modalities at varying levels of detail for a comprehensive understanding of the multimodal knowledge elicited by various prompts. Through diverse recommendations of demonstration examples and instructional principles, POEM supports users in iteratively crafting and refining prompts to better align and enhance model knowledge with human insights. The effectiveness and efficiency of our system are validated through quantitative and qualitative evaluations with experts.
ISSN:2165-8773
DOI:10.1109/PacificVis64226.2025.00010