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arxiv: 1805.08134 · v2 · pith:BOXC6UZInew · submitted 2018-05-21 · 💻 cs.GT · cs.LG

Overabundant Information and Learning Traps

classification 💻 cs.GT cs.LG
keywords informationlearningsourcescommunitylearnsoutcomesoverabundantsignal
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We develop a model of social learning from overabundant information: Short-lived agents sequentially choose from a large set of (flexibly correlated) information sources for prediction of an unknown state. Signal realizations are public. We demonstrate two starkly different long-run outcomes: (1) efficient information aggregation, where the community eventually learns as fast as possible; (2) "learning traps," where the community gets stuck observing suboptimal sources and learns inefficiently. Our main results identify a simple property of the signal correlation structure that separates these outcomes. In both regimes, we characterize which sources are observed in the long run and how often.

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