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Hauptverfasser: Chen, Liuqing, Xiao, Shuhong, Chen, Yunnong, Sun, Linyun, Childs, Peter R. N., Han, Ji
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2405.04985
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author Chen, Liuqing
Xiao, Shuhong
Chen, Yunnong
Sun, Linyun
Childs, Peter R. N.
Han, Ji
author_facet Chen, Liuqing
Xiao, Shuhong
Chen, Yunnong
Sun, Linyun
Childs, Peter R. N.
Han, Ji
contents Combinational creativity, a form of creativity involving the blending of familiar ideas, is pivotal in design innovation. While most research focuses on how combinational creativity in design is achieved through blending elements, this study focuses on the computational interpretation, specifically identifying the 'base' and 'additive' components that constitute a creative design. To achieve this goal, the authors propose a heuristic algorithm integrating computer vision and natural language processing technologies, and implement multiple approaches based on both discriminative and generative artificial intelligence architectures. A comprehensive evaluation was conducted on a dataset created for studying combinational creativity. Among the implementations of the proposed algorithm, the most effective approach demonstrated a high accuracy in interpretation, achieving 87.5% for identifying 'base' and 80% for 'additive'. We conduct a modular analysis and an ablation experiment to assess the performance of each part in our implementations. Additionally, the study includes an analysis of error cases and bottleneck issues, providing critical insights into the limitations and challenges inherent in the computational interpretation of creative designs.
format Preprint
id arxiv_https___arxiv_org_abs_2405_04985
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An Artificial Intelligence Approach for Interpreting Creative Combinational Designs
Chen, Liuqing
Xiao, Shuhong
Chen, Yunnong
Sun, Linyun
Childs, Peter R. N.
Han, Ji
Artificial Intelligence
Computational Engineering, Finance, and Science
Combinational creativity, a form of creativity involving the blending of familiar ideas, is pivotal in design innovation. While most research focuses on how combinational creativity in design is achieved through blending elements, this study focuses on the computational interpretation, specifically identifying the 'base' and 'additive' components that constitute a creative design. To achieve this goal, the authors propose a heuristic algorithm integrating computer vision and natural language processing technologies, and implement multiple approaches based on both discriminative and generative artificial intelligence architectures. A comprehensive evaluation was conducted on a dataset created for studying combinational creativity. Among the implementations of the proposed algorithm, the most effective approach demonstrated a high accuracy in interpretation, achieving 87.5% for identifying 'base' and 80% for 'additive'. We conduct a modular analysis and an ablation experiment to assess the performance of each part in our implementations. Additionally, the study includes an analysis of error cases and bottleneck issues, providing critical insights into the limitations and challenges inherent in the computational interpretation of creative designs.
title An Artificial Intelligence Approach for Interpreting Creative Combinational Designs
topic Artificial Intelligence
Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2405.04985