Prediction markets are a popular, prominent, and successful structure for a
collective intelligence platform. However the exact mechanism by which
information known to the participating traders is incorporated into the market
price is unknown. Kyle (1985) detailed a model for price formation in
continuous auctions with information distributed heterogeneously amongst market
participants. This paper demonstrates a novel method derived from the Kyle
model applied to data from a field experiment prediction market. The method is
able to identify traders whose trades have price impact that adds a significant
amount of information to the market price. Traders who are not identified as
informed in aggregate have price impact consistent with noise trading. Results
are reproduced on other prediction market datasets. Ultimately the results
provide strong evidence in favor of the Kyle model in a field market setting,
and highlight an under-discussed advantage of prediction markets over
alternative group forecasting mechanisms: that the operator of the market does
not need to have information on the distribution of information amongst
participating traders