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Sampling Distributions

General Mathematics
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Sampling Distributions

General Mathematics
01 May 2026

Sampling Distributions

What is a Sampling Distribution?

When repeated samples of the same size $n$ are drawn from a population, the sample statistic (e.g., $\bar{x}$ or $\hat{p}$) varies from sample to sample. The sampling distribution is the distribution of this statistic over all possible samples.

Sampling Distribution of the Sample Mean

For random samples of size $n$ from a population with mean $\mu$ and standard deviation $\sigma$:

$$\text{Mean of sampling distribution: } \mu_{\bar{x}} = \mu$$

$$\text{Standard deviation of sampling distribution (standard error): } SE = \frac{\sigma}{\sqrt{n}}$$

The standard error $SE$ decreases as $n$ increases — larger samples give more precise estimates.

Sampling Distribution of Sample Proportion

For a population proportion $p$, the sample proportion $\hat{p}$ from samples of size $n$ has:

$$\mu_{\hat{p}} = p \qquad SE_{\hat{p}} = \sqrt{\frac{p(1-p)}{n}}$$

The Effect of Sample Size

Sample size $n$ Standard error Precision
Small Large Low — estimates spread out
Large Small High — estimates clustered near $\mu$ or $p$

Doubling $n$ reduces $SE$ by a factor of $\sqrt{2} \approx 1.41$.

Worked Example

A population has mean $\mu = 40$ and standard deviation $\sigma = 10$. Samples of size $n = 25$ are drawn.

$$SE = \frac{10}{\sqrt{25}} = \frac{10}{5} = 2$$

The sample means will be centred at 40 with standard deviation 2. Most sample means will fall within \$40 \pm 2 \times 2 = 36$ to $44$.

Why is This Used in Inference?

The sampling distribution tells us:
- How much variation to expect in sample statistics by chance
- How to construct confidence intervals (using $SE$)
- How to decide if a sample result is unusual under a particular hypothesis

STUDY HINT: Think of the sampling distribution as answering: “If I took many samples and calculated $\bar{x}$ each time, what would that distribution look like?” It is a distribution of statistics, not raw data.

EXAM TIP: When given $\mu$ and $\sigma$ for a population, calculate $SE = \sigma / \sqrt{n}$ before answering questions about sample means. This is almost always the first required step.

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