Learning Design Preferences through Design Feature Extraction and Weighted Ensemble
Dongju Shin, Sunghee Lee, and Namwoo Kang

TL;DR
This paper introduces a novel framework that uses dimensionality reduction and ensemble methods to accurately predict individual design preferences, enhancing personalized product development.
Contribution
It presents a new approach combining feature extraction and weighted ensemble models to improve the accuracy of individual design preference prediction.
Findings
Effective dimensionality reduction captures key design features.
Preference prediction accuracy improves with the proposed ensemble method.
Framework enables personalized product recommendations.
Abstract
Design is a factor that plays an important role in consumer purchase decisions. As the need for understanding and predicting various preferences for each customer increases along with the importance of mass customization, predicting individual design preferences has become a critical factor in product development. However, current methods for predicting design preferences have some limitations. Product design involves a vast amount of high-dimensional information, and personal design preference is a complex and heterogeneous area of emotion unique to each individual. To address these challenges, we propose an approach that utilizes dimensionality reduction model to transform design samples into low-dimensional feature vectors, enabling us to extract the key representational features of each design. For preference prediction models using feature vectors, by referring to the design…
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Taxonomy
TopicsColor perception and design
