Let (B_{1}, ldots, B_{n}) be a set of independent and identically distributed random variables from a (operatorname{Bernoulli}(theta))
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Let \(B_{1}, \ldots, B_{n}\) be a set of independent and identically distributed random variables from a \(\operatorname{Bernoulli}(\theta)\) distribution. Suppose we are interested in estimating the variance \(g(\theta)=\theta(1-\theta)\) with the estimator \(g\left(\bar{B}_{n}ight)=\) \(\bar{B}_{n}\left(1-\bar{B}_{n}ight)\).
a. Find the bias and variance of \(g\left(\bar{X}_{n}ight)\) as an estimator of \(g(\theta)\) directly.
b. Find asymptotic expressions for the bias and variance of \(g\left(\bar{X}_{n}ight)\) as an estimator of \(g(\theta)\) using Theorem 10.1. Compare this result to the exact expressions derived above.
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