设计嵌入:设计思维对设计行为聚类的表示学习

Molla Hafizur Rahman, Charles Xie, Zhenghui Sha
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引用次数: 0

摘要

设计思维对设计过程的成功至关重要,因为它通过指导设计决策来帮助实现设计目标。因此,从根本上理解设计思维对于改进设计方法、工具和理论至关重要。然而,解释设计思维是具有挑战性的,因为它是一个隐藏和无形的认知过程。在本文中,我们将设计思维描述为人类设计师的思维过程和他们的设计行为之间的中间层。为此,本文首先在现有设计理论的基础上确定了五种设计行为。这些行为包括设计行为偏好、一步顺序行为、情境行为、长期顺序行为和反思行为。接下来,我们开发计算方法来表征每个设计行为。特别地,我们使用设计动作分布、一阶马尔可夫链、Doc2Vec、双向LSTM自编码器和时间间隔分布来表征五种设计行为。通过嵌入技术对设计行为的表征本质上是设计思维的一种潜在表征,我们称之为设计嵌入。在获得嵌入后,对每个嵌入采用x均值聚类算法。该方法应用于从高中太阳能系统设计挑战赛中收集的数据。聚类结果表明,设计师根据相应的行为遵循几种设计模式,验证了设计嵌入用于设计行为聚类的有效性。基于该方法的设计嵌入提取可用于其他设计研究,如推断设计决策、预测设计性能和识别设计动作识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design Embedding: Representation Learning of Design Thinking to Cluster Design Behaviors
Design thinking is essential to the success of a design process as it helps achieve the design goal by guiding design decision-making. Therefore, fundamentally understanding design thinking is vital for improving design methods, tools and theories. However, interpreting design thinking is challenging because it is a cognitive process that is hidden and intangible. In this paper, we represent design thinking as an intermediate layer between human designers’ thought processes and their design behaviors. To do so, this paper first identifies five design behaviors based on the current design theories. These behaviors include design action preference, one-step sequential behavior, contextual behavior, long-term sequential behavior, and reflective thinking behavior. Next, we develop computational methods to characterize each of the design behaviors. Particularly, we use design action distribution, first-order Markov chain, Doc2Vec, bi-directional LSTM autoencoder, and time gap distribution to characterize the five design behaviors. The characterization of the design behaviors through embedding techniques is essentially a latent representation of the design thinking, and we refer to it as design embeddings. After obtaining the embedding, an X-mean clustering algorithm is adopted to each of the embeddings to cluster designers. The approach is applied to data collected from a high school solar system design challenge. The clustering results show that designers follow several design patterns according to the corresponding behavior, which corroborates the effectiveness of using design embedding for design behavior clustering. The extraction of design embedding based on the proposed approach can be useful in other design research, such as inferring design decisions, predicting design performance, and identifying design actions identification.
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