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Knowledge Diversity and Its Influence on Technical Team Innovation Performance |
Shi Jing1, Sun Jianjun1,2 |
1.School of Information Management, Nanjing University, Nanjing 210023 2.Laboratory for Data Intelligence and Cross-Innovation of Nanjing University, Nanjing 210023 |
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Abstract Team innovation is a distinctive feature of the “Big Tech Era.” Numerous studies have examined the innovation process of scientific teams, but technical teams have received insufficient attention. Particularly, the knowledge diversity of technical teams and its impact on innovation performance remains unclear. Considering the features of technical teams, we propose a new method to identify teams, then construct team knowledge networks, measure knowledge diversity, and explore its impact on team innovation performance. The impact is analyzed from three dimensions: innovation quantity, innovation quality, and innovation breadth. The results reveal that knowledge diversity can significantly improve the innovation performance in all three dimensions. Specifically, when aiming at innovation productivity, larger teams can better exert a positive effect of knowledge diversity. However, when focusing on innovation novelty and originality, knowledge diversity can improve innovation performance more obviously in a smaller team. This study can be considered with the relevant research on scientific teams to help understand the different characteristics and mechanisms in scientific and technical teams. It can also assist R&D departments and managers to allocate resources for different innovation goals.
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Received: 06 September 2022
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