Direct mail advertisers send solicitations​ ("junk mail") to thousands of potential customers in the hope that some will buy the​ company's product. The response rate is usually quite low. Suppose a company wants to test the response to a new flyer and sends it to 1180 people randomly selected from their mailing list of over​ 200,000 people. They get orders from 148 of the recipients. Use this information to complete parts a through d.

) Create a 90​% confidence interval for the percentage of people the company contacts who may buy something.

To create a confidence interval for the percentage of people who may buy something based on the given information, we can use the following formula:

CI = p̂ ± Z * √(p̂ * (1-p̂) / n)

where:
- p̂ is the sample proportion (the number of orders divided by the total number of people contacted)
- Z is the Z-score corresponding to the desired confidence level (90% in this case)
- n is the sample size (the number of people contacted)

First, we calculate the sample proportion:
p̂ = (number of orders) / (total number of people contacted)
= 148 / 1180
≈ 0.1254

Next, we need to find the Z-score corresponding to a 90% confidence level. We can use a standard normal distribution table or a statistical calculator. For a 90% confidence level, the Z-score is approximately 1.645.

Now we can plug the values into the formula to calculate the confidence interval:

CI = 0.1254 ± 1.645 * √(0.1254 * (1-0.1254) / 1180)

Calculating the values inside the square root:
√(0.1254 * (1-0.1254) / 1180) ≈ 0.0139

Plugging back into the formula:
CI = 0.1254 ± 1.645 * 0.0139

Calculating the values:
CI = 0.1254 ± 0.0229

Therefore, the 90% confidence interval for the percentage of people the company contacts who may buy something is approximately:
0.1025 ≤ p ≤ 0.1483

This means that we can be 90% confident that the true percentage of people who may buy something lies within the range of 10.25% to 14.83%.