Idea Convergence Quality in Open Innovation Crowdsourcing: A Cognitive Load Perspective
成果类型:
Article
署名作者:
Cheng, Xusen; Fu, Shixuan; de Vreede, Triparna; De Vreede, Gert-Jan; Seeber, Isabella; Maier, Ronald; Weber, Barbara
署名单位:
Renmin University of China; Beijing International Studies University; State University System of Florida; University of South Florida; University of Innsbruck; University of Vienna; University of St Gallen
刊物名称:
JOURNAL OF MANAGEMENT INFORMATION SYSTEMS
ISSN/ISSBN:
0742-1222
DOI:
10.1080/07421222.2020.1759344
发表日期:
2020
页码:
349-376
关键词:
facilitation interventions
working-memory
INFORMATION
MODEL
online
need
attention
search
IMPACT
antecedents
摘要:
Open innovation crowdsourcing enables online crowds to quickly generate a plethora of creative ideas. A key challenge is the convergence of ideas for further consideration from massive numbers of candidate ideas with diverse quality. Based on Cognitive Load Theory, we executed a laboratory experiment to test the associations between three types of cognitive load manipulations and idea convergence outcomes. Our findings show that germane cognitive load positively correlates with idea convergence quality, satisfaction with process, and satisfaction with outcome. Intrinsic cognitive load is negatively associated with satisfaction with process and satisfaction with outcome, while extraneous cognitive load negatively correlates only with satisfaction with outcome. We further identified the positive moderation role of knowledge self-efficacy, perceived goal clarity, and need for cognition on the relationships between germane cognitive load and idea convergence quality. Our findings can inform open innovation organizers when designing tasks and interventions to improve convergence outcomes.