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15. Consider the random variable X that is uniformly disributed over the interval (0,0), where unknown parameter. We are considering the estimator à and we know the distribution of e, is: θ is our n n-i 0x-10 Xsb The expected value of a is E[A] =wn 10. 0 Otherwise a) Create an estimator 6, that is based on a that is an unbiased estimator of. θ mi 승 우수 b) Determine the variance of d
b)how to do that
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099140 E(A) o on n t ntlY) ザ ne

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