Eliminating Public Knowledge Biases in Information-Aggregation Mechanisms

MANAGEMENT SCIENCE(2004)

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摘要
We present a novel methodology for identifying public knowledge and eliminating the biases it creates when aggregating information in small group settings. A two-stage mechanism consisting of an information market and a coordination game is used to reveal and adjust for individuals' public information. A nonlinear aggregation of their decisions then allows for the calculation of the probability of the future outcome of an uncertain event, which can then be compared to both the objective probability of its occurrence and the performance of the market as a whole. Experiments show that this nonlinear aggregation mechanism outperforms both the imperfect market and the best of the participants.
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关键词
information aggregation,public knowledge,markets,objective probability,received may 7,strategy,aggregating information,two-stage mechanism,and design,experimental economics,public knowledge biases,public information,information market,nonlinear aggregation,coordination game,nonlinear aggregation mechanism,organization performance,2002. this paper was with the authors 4 months for 2 revisions.,imperfect market,forecasting history: accepted by linda argote,scoring rules,game theory,information-aggregation mechanisms,scoring rule,forecasting
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