Question

(6) The sequence of random variable X1, ..., xn(n > 1) are independent of each other and they follow the normal distribution

Ν(μ, 1)  (\mu \epsilon \mathbb{R}). However, the actual value of X_{i} were not observed, instead we only observed if each X_{i} is either greater than or

equal to 0, or less than 0.

(1) 一()     -00 < <

And you can use the fact that there is the inverse function o-1: (0,1)+R that  is continuous.

Answer the following questions.

\cdot   Find the maximum likelihood estimator \widehat{\mu }_{n} of {\mu } .

\cdot   When n\rightarrow \infty , show \widehat{\mu }_{n} \overset{p}{\rightarrow} \mu ,   where \overset{p}{\rightarrow} represents conversion of probability.

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Answer #1

*1.-Xn NAM, 1),n, MER po at each xi it, fex) = be Ź Cray?, cocaco - Uh< tx. Likelihood frietim of Xive-sty js, LIM2L) = f(xi.

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