TY - GEN
T1 - Idea evaluation mechanisms for collective intelligence in open innovation communities
T2 - 32nd International Conference on Information System 2011, ICIS 2011
AU - Blohm, Ivo
AU - Riedl, Christoph
AU - Leimeister, Jan Marco
AU - Krcmar, Helmut
PY - 2011
Y1 - 2011
N2 - The increasing popularity of open innovation approaches has led to the rise of various open innovation communities on the Internet which might contain several thousand user-generated ideas. However, a company's absorptive capacity is limited regarding such an amount of ideas so that there is a strong need for mechanisms supporting the evaluation of these ideas. In this paper, we focus on the evaluation of such mechanisms for collective idea evaluation. Applying a multi-method approach, we compare six different configurations of a prediction market with a multi-criteria rating scale that performed best in previous research. We combine a web-based experiment with 448 participants, data from a participant survey, and an independent expert jury. Based on cognitive load theory, we explain why a multi-criteria rating scale outperforms prediction markets in terms of evaluation accuracy and evaluation satisfaction. This study contributes to theory building in the emerging field of collective intelligence.
AB - The increasing popularity of open innovation approaches has led to the rise of various open innovation communities on the Internet which might contain several thousand user-generated ideas. However, a company's absorptive capacity is limited regarding such an amount of ideas so that there is a strong need for mechanisms supporting the evaluation of these ideas. In this paper, we focus on the evaluation of such mechanisms for collective idea evaluation. Applying a multi-method approach, we compare six different configurations of a prediction market with a multi-criteria rating scale that performed best in previous research. We combine a web-based experiment with 448 participants, data from a participant survey, and an independent expert jury. Based on cognitive load theory, we explain why a multi-criteria rating scale outperforms prediction markets in terms of evaluation accuracy and evaluation satisfaction. This study contributes to theory building in the emerging field of collective intelligence.
KW - Cognitive load theory
KW - Collective intelligence
KW - Communities
KW - Crowdsourcing
KW - Idea evaluation
KW - Information aggregation
KW - Open innovation
KW - Prediction markets
KW - Rating scales
KW - Web 2.0
UR - https://www.scopus.com/pages/publications/84884653196
M3 - Conference contribution
AN - SCOPUS:84884653196
SN - 9781618394729
T3 - International Conference on Information Systems 2011, ICIS 2011
SP - 3059
EP - 3082
BT - International Conference on Information Systems 2011, ICIS 2011
Y2 - 4 December 2011 through 7 December 2011
ER -