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Assume the lifetime (in months) of batteries is modeled as an exponential random variable with parameter ๐œ† . The probability density function of the random variable is ๐‘ ๐œ† ( ๐‘ฅ ) = ๐œ† ๐‘’ โˆ’ ๐œ† ๐‘ฅ , with ๐‘ฅ โˆˆ [ 0 , โˆž ) . We have collected an i.i.d. sample of 5 batteries whose lifetimes in months are 4, 8, 6, 10, 7, respectively. The standardized log-likelihood of a sample with ๐‘› i.i.d. observations is 1 ๐‘› log ๐ฟ ( ๐‘ฅ , ๐œ† ) = 1 ๐‘› โˆ‘ ๐‘– = 1 ๐‘› ( log ( ๐œ† ) โˆ’ ๐œ† ๐‘ฅ ๐‘– ) . To compute the standard errors of the MLE estimate of ๐œ† we need to compute the value of ๐ต ฬ‚ 0 for this model. Given this information:

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A.There is not enough information to compute the estimate ๐ต ฬ‚ 0 .
B.๐ต ฬ‚ 0 = โˆ’ 49 .
C.๐ต ฬ‚ 0 = โˆ’ 7 .
D.๐ต ฬ‚ 0 = 1 7 .
E.๐ต ฬ‚ 0 = 1 49 .
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We start by restating the setup in our own words to ensure clarity: we have iid lifetimes X1,...,X5 from an exponential distribution with rate parameter lambda, so the density is p_lambda(x) = lambda * e^{-lambda x} for x >= 0. The sample given is 4, 8, 6, 10, 7 (in months). The standardized log-likelihood for a sample with n observations is l_bar(lambda) = (1/n) * sum_i [ log(lambda) - lambda * x_i ] = log(lambda) - lambda * x_bar, where x_bar is the sample mean. First, compute the sample mean: x_bar = (4 + 8 + 6 + 10 + 7) / 5 = 35 / 5 = 7. Thus l_bar(lambda) = log(lambda) - lambda * 7. Next, identify the MLE for lambda in this exponential model. The standard (unstandardized) log-likelihood is l(lambda) = n log(lambda) - lambda * sum_i x_i. Its derivative is 0 at d/d lambda l = n / lambda - sum_i x_i = 0, giving lambda_hat = n / sum......Login to view full explanation

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