How does a larger sample size generally impact the Standard Error and the resulting interval?
Answer
It reduces the standard error, leading to a narrower, more precise interval.
The standard error is inversely related to the square root of the sample size; therefore, a larger sample size reduces noise, shrinks the MOE, and results in higher precision.

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