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Extracting functional requirements from design documentation using machine learning

机译:使用机器学习提取设计文档的功能要求

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Good design practice and digital tools have enabled industry to produce valuable products. Early-stage design research involves rigorous background study of large volumes of design documentation which designers must analyze manually, to extract functional requirements which are abstracted and prioritized to guide a design. Recent advances in Machine Learning, specifically Natural Language Processing (NLP), can be applied to enhance the time-consuming and difficult practice of the human designer by performing tasks such as extracting functional requirements from long-form written documentation. This work demonstrates how extractive question-answering by neural networks can be applied to design as a tool for automating this initial step in the design process. We applied the language model BERT, fine-tuned on question-answering, to identify functional requirements in written documentation. Limitations due to wording sensitivity are discussed and an outline for training a design-specific model is discussed with a MEMS product design case. This work presents how this application of AI to design could enhance the work of human designers using the power of computing, which will open the door for learning from big data of past product designs by allowing machines to “read” them.
机译:良好的设计实践和数字工具使行业能够生产有价值的产品。早期的设计研究涉及到大量的设计文件的设计人员需要人工分析,以提取被抽象和优先级来引导设计功能要求的严格的背景研究。最近的机器学习进步,专门的自然语言处理(NLP)可以应用于通过执行从长形书面文档提取功能要求等任务来增强人类设计师的耗时和困难的做法。这项工作展示了神经网络的提取问答如何应用于设计作为一种自动化设计过程中初始步骤的工具。我们应用了语言模型BERT,精细调整的问题回答,以识别书面文件中的功能要求。讨论了由于措辞灵敏度导致的限制,并用MEMS产品设计案例讨论了用于训练设计特定模型的概要。这项工作介绍了AI设计的这种应用如何利用计算的力量来增强人类设计师的工作,这将通过允许机器“读取”它们来打开从过去产品设计的大数据学习的门。

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