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Estimation theory / Statistical theory / Maximum likelihood estimation / Bias of an estimator / Completeness / Poisson regression / Linear regression / Exponential family / Likelihood function / Estimator / Mean squared error / Law of large numbers
Date: 2013-06-06 11:45:10
Estimation theory
Statistical theory
Maximum likelihood estimation
Bias of an estimator
Completeness
Poisson regression
Linear regression
Exponential family
Likelihood function
Estimator
Mean squared error
Law of large numbers

Fast inference in generalized linear models via expected log-likelihoods Alexandro D. Ramirez 1,*, Liam Paninski 2 1 Weill Cornell Medical College, NY. NY, U.S.A *

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