AIDB Daily Papers
ペルソナグラム:マルチモーダルLLMによる創造的なアイデア出しのためのペルソナと製品デザインの橋渡し
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ポイント
- 製品デザイナー向けに、詳細なペルソナに基づき製品機能を抽出・再構成するインタラクティブシステムPersonagramを構築した。
- 従来抽象的で高コストだったペルソナを、MLLMを活用して具体的なデザイン機能に変換し、より実践的なアイデア出しを促進する。
- 専門デザイナーによる評価実験で、Personagramはペルソナへの高い関与、透明性、満足度を実現し、有効性を示した。
Abstract
Product designers often begin their design process with handcrafted personas. While personas are intended to ground design decisions in consumer preferences, they often fall short in practice by remaining abstract, expensive to produce, and difficult to translate into actionable design features. As a result, personas risk serving as static reference points rather than tools that actively shape design outcomes. To address these challenges, we built Personagram, an interactive system powered by multimodal large language models (MLLMs) that helps designers explore detailed census-based personas, extract product features inferred from persona attributes, and recombine them for specific customer segments. In a study with 12 professional designers, we show that Personagram facilitates more actionable ideation workflows by structuring multimodal thinking from persona attributes to product design features, achieving higher engagement with personas, perceived transparency, and satisfaction compared to a chat-based baseline. We discuss implications of integrating AI-generated personas into product design workflows.
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