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Let x₁ , x₂,…xₐ be a random sample from X with density f(x,?) = α?−?−1      x>1...

Let x₁ , x₂,…xₐ be a random sample from X with density f(x,?) = α?−?−1      x>1 Find maximum likelihood estimator of ?.

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