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Consider the fitted values that result from performing simple linear regression without an intercept, i.e., the...

Consider the fitted values that result from performing simple linear regression without an intercept, i.e., the model is Y = βX + error.

(a) By minimizing the RSS, find the estimated coefficient βˆ (the least square estimator).

(b) Show that the least square estimater is unbiased, i.e., E(βˆ) = β

(c) (5 points) What is the variance of the estimator? i.e., find V ar(βˆ).

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