Published in

American Society of Mechanical Engineers, Journal of Computing and Information Science in Engineering, 4(17), p. 041001

DOI: 10.1115/1.4036198

Volume 7: 27th International Conference on Design Theory and Methodology

DOI: 10.1115/detc2015-47369

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Automatic Discovery of Design Task Structure Using Deep Belief Nets

Journal article published in 2015 by Lijun Lan, Wen Feng Lu, Ying Liu ORCID, Awn Alghamdi, Wen Feng Lu
This paper is available in a repository.
This paper is available in a repository.

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Abstract

With the arrival of cyber physical world and an extensive support of advanced information technology (IT) infrastructure, nowadays it is possible to obtain the footprints of design activities through emails, design journals, change logs, and different forms of social data. In order to manage a more effective design process, it is essential to learn from the past by utilizing these valuable sources and understand, for example, what design tasks are actually carried out, their interactions, and how they impact each other. In this paper, a computational approach based on the deep belief nets (DBN) is proposed to automatically uncover design tasks and quantify their interactions from design document archives. First, a DBN topic model with real-valued units is developed to learn a set of intrinsic topic features from a simple word-frequency-based input representation. The trained DBN model is then utilized to discover design tasks by unfolding hidden units by sets of strongly connected words, followed by estimating the interactions among tasks on the basis of their co-occurrence frequency in a hidden topic space. Finally, the proposed approach is demonstrated through a real-life case study using a design email archive spanning for more than 2 yr.