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Statistics / Mathematical analysis / Statistical theory / Probability distributions / Estimation theory / Statistical inference / Statistical tests / Confidence interval / Normal distribution / Distribution / Likelihood-ratio test / Maximum likelihood estimation
Date: 2012-01-12 12:02:15
Statistics
Mathematical analysis
Statistical theory
Probability distributions
Estimation theory
Statistical inference
Statistical tests
Confidence interval
Normal distribution
Distribution
Likelihood-ratio test
Maximum likelihood estimation

EXTENDED NEYMAN SMOOTH GOODNESS-OF-FIT TESTS, APPLIED TO COMPETING HEAVY-TAILED DISTRIBUTIONS J. Huston McCulloch and E. Richard Percy, Jr.* J. Econometrics Special Issue Submission: Sept. 14, 2010

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