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Multiple Choice

A machine learning engineer is comparing two estimators, Estimator A and Estimator B, to predict a certain value. The primary goal is to minimize the expected squared error. After analysis, the following characteristics are determined:

  • Estimator A: Has a bias of 0 and a variance of 4.
  • Estimator B: Has a bias of 1 and a variance of 2.

Which estimator should be chosen, and why?

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Updated 2025-10-07

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