Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
979275 | Physica A: Statistical Mechanics and its Applications | 2010 | 7 Pages |
Abstract
We investigate a toy model of inductive interacting agents aiming to forecast a continuous, exogenous random variable EE. Private information on EE is spread heterogeneously across agents. Herding turns out to be the preferred forecasting mechanism when heterogeneity is maximal. However in such conditions aggregating information efficiently is hard even in the presence of learning, as the herding ratio rises significantly above the efficient market expectation of 1 and remarkably close to the empirically observed values. We also study how different parameters (interaction range, learning rate, cost of information and score memory) may affect this scenario and improve efficiency in the hard phase.
Keywords
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Physical Sciences and Engineering
Mathematics
Mathematical Physics
Authors
S. Gualdi, A. De Martino,