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Let X1, , Xn be a sample of size n from a distribution with the density 0 otherwise

where α > 0 and β 0 (so called Weibull distribution). Assuming β is known, find a maximum likelihood estimate for α.

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Answer #1

TOPIC: Maximum likelihood estimator(MLE).

召 0m イ 2 [B四 known. Whirt, B70,

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