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Inflation of Type I error rate in multiple regression when independent variables are measured with error

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When independent variables are measured with error, ordinary least squares regression can yield parameter estimates that are biased and inconsistent. This article documents an inflation of Type I error rate that can also occur. In addition to analytic results, a large-scale Monte Carlo study shows unacceptably high Type I error rates under circumstances that could easily be encountered in practice. A set of smaller-scale simulations indicate that the problem applies to various types of regression and various types of measurement error.

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Brunner J, Austin PC. Can J Stat. 2009; 37(1):33-46.

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