QUESTION IMAGE
Question
- referring to question 3, what happened to the standard error when the sample size (n) was increased? use the formula to justify why this happened. standard deviation decreased
Step1: Recall Standard Error Formula
The formula for the standard error (SE) of the mean is \( SE=\frac{\sigma}{\sqrt{n}} \), where \( \sigma \) is the population standard deviation and \( n \) is the sample size.
Step2: Analyze the Effect of Increasing \( n \)
As \( n \) (the sample size) increases, the denominator \( \sqrt{n} \) in the formula \( SE = \frac{\sigma}{\sqrt{n}} \) becomes larger. Since \( \sigma \) (assuming it remains constant) is divided by a larger number, the value of \( SE \) will decrease. For example, if \( \sigma = 10 \) and \( n = 4 \), then \( SE=\frac{10}{\sqrt{4}} = 5 \). If \( n \) increases to \( 16 \), then \( SE=\frac{10}{\sqrt{16}} = 2.5 \), which is smaller than 5. So as sample size \( n \) increases, the standard error decreases because the formula shows that standard error is inversely related to the square root of the sample size.
Snap & solve any problem in the app
Get step-by-step solutions on Sovi AI
Photo-based solutions with guided steps
Explore more problems and detailed explanations
When the sample size \( n \) is increased, the standard error decreases. This is justified by the standard error formula \( SE=\frac{\sigma}{\sqrt{n}} \): as \( n \) (the sample size) increases, the denominator \( \sqrt{n} \) increases (for a constant population standard deviation \( \sigma \)), so the overall value of \( SE \) (the quotient \( \frac{\sigma}{\sqrt{n}} \)) decreases.