Member Selection for the Collaborative New Product Innovation Teams Integrating Individual and Collaborative Attributions

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Abstract

As the first stage of the formation of a collaborative new product innovation (CNPI) team, member selection is crucial for the effective operation of the CNPI team and the achievement of new product innovation goals. Considering comprehensively the individual and collaborative attributions, the individual knowledge competence, knowledge complementarity, and collaborative performance among candidates are chosen as the criteria to select CNPI team members in this paper. Moreover, using the fuzzy set and social network analysis method, the quantitative methods of the above criteria are proposed correspondingly. Then, by integrating the above criteria, a novel multiobjective decision model for member selection of the CNPI team is built from the view of individual and collaborative attributions. Since the proposed model is NP-hard, a double-population adaptive genetic algorithm is further developed to solve it. Finally, a real case is provided to illustrate the application and effectiveness of the proposed model and method in this paper.

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Su, J., Zhang, F., Chen, S., Zhang, N., Wang, H., & Jian, J. (2021). Member Selection for the Collaborative New Product Innovation Teams Integrating Individual and Collaborative Attributions. Complexity, 2021. https://doi.org/10.1155/2021/8897784

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