论文标题
设计概念生成的生成变压器
Generative Transformers for Design Concept Generation
论文作者
论文摘要
在早期的设计阶段,要探索各种各样的设计机会,这通常需要高级设计思维能力和设计师的广泛知识。关于计算机辅助工具的不断增长的作品探讨了从设计数据中检索知识和启发式方法。但是,它们仅提供刺激,以激发设计师从有限的方面启发。这项研究探讨了人工智能(AI)领域的自然语言生成(NLG)技术的最新进展,以使早期设计概念生成自动化。具体而言,提出了一种使用生成预训练的变压器(GPT)的新方法来利用文本数据的知识和推理,并以可理解的语言转换为新概念。定义了三个概念生成任务以利用不同的知识和推理:域知识综合,问题驱动的合成和类比驱动的综合。人类和数据驱动评估的实验在产生新颖和有用的概念方面表现出良好的表现。
Generating novel and useful concepts is essential during the early design stage to explore a large variety of design opportunities, which usually requires advanced design thinking ability and a wide range of knowledge from designers. Growing works on computer-aided tools have explored the retrieval of knowledge and heuristics from design data. However, they only provide stimuli to inspire designers from limited aspects. This study explores the recent advance of the natural language generation (NLG) technique in the artificial intelligence (AI) field to automate the early-stage design concept generation. Specifically, a novel approach utilizing the generative pre-trained transformer (GPT) is proposed to leverage the knowledge and reasoning from textual data and transform them into new concepts in understandable language. Three concept generation tasks are defined to leverage different knowledge and reasoning: domain knowledge synthesis, problem-driven synthesis, and analogy-driven synthesis. The experiments with both human and data-driven evaluation show good performance in generating novel and useful concepts.