Searching for Information

This paper provides a search-based information acquisition framework using an urn model with an asymptotic approach. The underlying intuition of the model is simple: when the scope of information search is more limited, marginal search efforts produce less useful information due to redundancy, but commonality of information among different agents increases. Consequently, limited information searchability induces a trade-off between an information source’s precision and its commonality. In a “beauty contest”game with endogenous information acquisition, this precision-commonality trade-off generates nonfundamental volatility through the channel of information acquisition. JEL Classification Codes: C65, D80, D81, D83

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