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Statistical theory / Psychometrics / Bayesian inference / Statistical forecasting / Economic model / Sequential probability ratio test / Inference / Bootstrapping / Statistics / Statistical inference / Bayesian statistics
Date: 2011-07-09 18:38:22
Statistical theory
Psychometrics
Bayesian inference
Statistical forecasting
Economic model
Sequential probability ratio test
Inference
Bootstrapping
Statistics
Statistical inference
Bayesian statistics

This article was downloaded by: [University College London] On: 09 July 2011, At: 15:37 Publisher: Psychology Press Informa Ltd Registered in England and Wales Registered Number: Registered office: Mortimer House

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