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Let Y₁, Y₂, Yₙ denote a random sample from a population with mean μ and variance 2. Consider the following three estimators for μ:

User Vallard
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1 Answer

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Complete Question:

Consider three estimators for the population mean μ based on a random sample Y₁, Y₂, Yₙ with mean μ and variance 2. The three estimators are:

1.
\( \hat{μ}_1 = Y₁ \)

2.
\( \hat{μ}_2 = (Y₁ + Y₂)/(2) \)

3.
\( \hat{μ}_3 = (Y₁ + 2Y₂ + Yₙ)/(4) \)

Which of these estimators is unbiased for μ?

Final Answer:

Estimator
\( \hat{μ}_1 = Y₁ \) is unbiased for μ.

The correct answer is 1.

Step-by-step explanation:

To determine whether an estimator is unbiased, we need to check if the expected value of the estimator equals the parameter being estimated. In this case, we need to evaluate
\( E(\hat{μ}_i) \) for each estimator
\( \hat{μ}_i \).

1. For
\( \hat{μ}_1 = Y₁ \):


\[ E(\hat{μ}_1) = E(Y₁) = μ \]

Hence,
\( \hat{μ}_1 \) is unbiased for μ.

2. For
\( \hat{μ}_2 = (Y₁ + Y₂)/(2) \):


\[ E(\hat{μ}_2) = (E(Y₁) + E(Y₂))/(2) = μ + (μ)/(2) \\eq μ \] \( \hat{μ}_2 \)is biased.

3. For
\( \hat{μ}_3 = (Y₁ + 2Y₂ + Yₙ)/(4) \):


\[ E(\hat{μ}_3) = (E(Y₁) + 2E(Y₂) + E(Yₙ))/(4) = μ + (μ)/(2) + (μ)/(4) \\eq μ \] \( \hat{μ}_3 \) is biased.

Therefore, only
\( \hat{μ}_1 \) is an unbiased estimator for μ.

The correct answer is 1.

User Robert Dale Smith
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