Concept clustering is an important element of the product development process. The process of reviewing multiple concepts provides a means of communicating concepts developed by individual team members and by the team as a whole. Clustering, however, can also require arduous iterations and the resulting clusters may not always be useful to the team. In this paper, we present a machine learning approach on natural language descriptions of concepts that enables an automatic means of clustering. Using data from over 1000 concepts generated by student teams in a graduate new product development class, we provide a comparison between the concept clustering performed manually by the student teams and the work automated by a machine learning algorithm. The goal of our machine learning tool is to support design teams in identifying possible areas of "over-clustering" and/or "under-clustering" in order to enhance divergent concept generation processes.
CITATION STYLE
Zhang, C., Kwon, Y. P., Kramer, J., Kim, E., & Agogino, A. M. (2017). Concept Clustering in Design Teams: A Comparison of Human and Machine Clustering. Journal of Mechanical Design, 139(11). https://doi.org/10.1115/1.4037478
Mendeley helps you to discover research relevant for your work.