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PI-GENAI: PERSONALITY-INCORPORATED GENERATIVE AI FOR DESIGN CONCEPT EVALUATION

Authors
Park, SeyoungLin, KangchengKim, Harrison
Issue Date
Dec-2024
Publisher
American Society of Mechanical Engineers (ASME)
Keywords
customer segmentation; Design evaluation; generative AI; large language model; LLM
Citation
Proceedings of the ASME Design Engineering Technical Conference, v.3A-2025
Indexed
SCOPUS
Journal Title
Proceedings of the ASME Design Engineering Technical Conference
Volume
3A-2025
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/81423
DOI
10.1115/DETC2025-168787
Abstract
In industry, companies conduct pre-evaluations of new product concepts to assess their potential market success and refine designs accordingly. However, conventional evaluation methods, such as focus group discussions and expert interviews, are often time-consuming and costly, limiting their scalability and frequency. With the rise of generative AI, particularly large language models (LLMs), more efficient approaches to concept evaluation have emerged. Despite these advancements, existing methods largely overlook the diverse characteristics of consumers and the need for personality incorporation, reducing their effectiveness in capturing varied customer perspectives. This study proposes a personality-incorporated generative AI framework that adapts LLMs to reflect the properties of different customer segments. We employ sentiment-based customer segmentation on smartphone reviews and fine-tune LLaMA to generate synthetic evaluations aligned with real-world consumer sentiments. Experimental results demonstrate that fine-tuned models effectively capture overall sentiment trends, though challenges remain in preserving sentiment contrast and mitigating biases toward positive outputs. Additionally, segment-aware fine-tuning enhances alignment with actual customer opinions, offering a structured approach for analyzing consumer feedback in product design. By bridging LLMs and customer segmentation, this work improves AI-driven product concept evaluations, offering a scalable, data-driven approach to support informed decision-making in new product development.
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Park, Seyoung
공과대학 (산업시스템공학부)
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