Research Question

When working with confidence intervals, we start with a Research Question:
Taking a sample and finding the sample statistic, what can we estimate about the population? To answer this, we calculate a confidence interval or conduct a Hypothesis Test.


5.1 - Point Estimates and Confidence Intervals

Point estimates are single values calculated from sample data to estimate population parameters. They serve as our β€œbest guess” of the true population value.

Point Estimates

For example:

  • Use the sample mean to estimate the population mean .
  • Use the sample proportion to estimate the population proportion .

Point estimates give us a starting point, but they lack information about how much error may exist in the estimate. That’s where confidence intervals come in.


5.2 - Confidence Intervals for Proportions

Traditional Method Only

In this class, we focus solely on the traditional method for constructing confidence intervals, ignoring other approaches like bootstrapping.

Confidence Interval Example - Presidential Approval Rating

Polls often present approval ratings in the format:

This is equivalent to the formula:

Where:

  • = sample proportion
  • = margin of error

Constructing a Confidence Interval

  1. Start with a Random Sample from a Sampling Distribution. Assume the sample proportion is approximately normal:

    Where:

    • = population proportion
    • = sample size
  2. Calculate the standard error (SE):

    For confidence intervals, .

  3. Use the formula for a confidence interval:

    Where is the critical value for the desired confidence level.

Confidence Levels and Critical Values

Common critical values for the -score:

  • 95% Confidence Level:
  • 90% Confidence Level:
  • 80% Confidence Level:

Observation

As the confidence level increases, the margin of error also increases. This means we gain confidence but lose precision.


Why Confidence Intervals?

Confidence intervals provide a range within which we expect the true population parameter to lie with a certain level of confidence. This is more informative than a single point estimate, as it accounts for sampling variability.

For example:

  • If with , the 95% confidence interval is: This means we are 95% confident the true population proportion lies within this range.