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If I know that (X1, X2, ...Xn) is an i.i.d sample of an exponential distribution, how...

If I know that (X1, X2, ...Xn) is an i.i.d sample of an exponential distribution, how can I get a distribution of theta (the parameter for the pdf, or the expectation of the distribution) with x bar?

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