TY - JOUR
T1 - Winning by learning? Effect of knowledge sharing in crowdsourcing contests
AU - Jin, Yuan
AU - Cheung, Ho
AU - Lee, Brian
AU - Ba, Sulin
AU - Stallaert, Jan
N1 - Funding Information:
History: Yulin Fang, Senior Editor; Jianqing Chen, Associate Editor. Funding: This work was partially supported by the National Natural Science Foundation of China [Grant 71229101].
Publisher Copyright:
Copyright: © 2021 INFORMS
PY - 2021/9
Y1 - 2021/9
N2 - A crowdsourcing contest connects solution seekers to online users who compete with each other to solve the seeker's problem by generating innovative ideas. Knowledge sharing that occurs in such a contest may play an important role in the process of contestants generating high-quality solutions. On the one hand, more knowledge resources may lower the participation cost and help improve crowdsourcing performance. On the other hand, the shared knowledge may also interrupt contestants' independent solution search processes and distract contestants. This study demonstrates the existence of knowledge sharing's impact on crowdsourcing contestants' performance and identifies the influence of different shared knowledge dimensions on crowdsourcing contestants. The results indicate that having a knowledge sharing process on the platform does not necessarily improve crowdsourcing contestants' performance. We show that the effectiveness of knowledge sharing is influenced by the volume, quality, and generativity of shared knowledge. The shared knowledge is only beneficial when it is of high quality or of high generativity. In addition, we examine the effects of the breadth and depth of knowledge generativity in the knowledge sharing process and find that a high degree of derivation breadth improves contestants' performance. The findings provide implications for a crowdsourcing contest platform to utilize the knowledge sharing feature effectively. The key to making full use of this feature is to ensure a high quality of the shared knowledge and to encourage more contributions of generative knowledge, especially the generative knowledge of great breadth.
AB - A crowdsourcing contest connects solution seekers to online users who compete with each other to solve the seeker's problem by generating innovative ideas. Knowledge sharing that occurs in such a contest may play an important role in the process of contestants generating high-quality solutions. On the one hand, more knowledge resources may lower the participation cost and help improve crowdsourcing performance. On the other hand, the shared knowledge may also interrupt contestants' independent solution search processes and distract contestants. This study demonstrates the existence of knowledge sharing's impact on crowdsourcing contestants' performance and identifies the influence of different shared knowledge dimensions on crowdsourcing contestants. The results indicate that having a knowledge sharing process on the platform does not necessarily improve crowdsourcing contestants' performance. We show that the effectiveness of knowledge sharing is influenced by the volume, quality, and generativity of shared knowledge. The shared knowledge is only beneficial when it is of high quality or of high generativity. In addition, we examine the effects of the breadth and depth of knowledge generativity in the knowledge sharing process and find that a high degree of derivation breadth improves contestants' performance. The findings provide implications for a crowdsourcing contest platform to utilize the knowledge sharing feature effectively. The key to making full use of this feature is to ensure a high quality of the shared knowledge and to encourage more contributions of generative knowledge, especially the generative knowledge of great breadth.
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U2 - 10.1287/ISRE.2020.0982
DO - 10.1287/ISRE.2020.0982
M3 - Article
AN - SCOPUS:85117214514
SN - 1047-7047
VL - 32
SP - 836
EP - 859
JO - Information Systems Research
JF - Information Systems Research
IS - 3
ER -