Example: Assume that adults were randomly selected for a poll. They were asked if they "favor or oppose using federal tax dollars to fund medical research using stem cells obtained from human embryos.” Of those polled, 480 were in favor and 394 were opposed. A politician claims that people don’t really understand the stem cell issue and their responses to such questions are random responses equivalent to a coin toss. Use a 0.01 significance level to test the claim that the proportion of subjects who respond in favor is equal to 0.5. What does the result suggest about the politician’s claim? Following the hypothesis test steps, let’s first identify the claim and the null and alternative hypotheses: For this example, the original claim is that the proportion of the subjects who responded in favor is equal to 0.5 (half – since the politician compared their responses as equivalent to a coin toss). The symbolic form of the politician’s claim can be expressed as p = 0.5. Also notice that this hypothesis test is about a proportion – it will be very important for you to identify in each question if you are conducting a hypothesis test about a population proportion, mean, or standard deviation so that you know which StatCrunch directions to follow, and how to analyze your results. In this project, you will only be responsible for testing claims about proportions and means. The null hypothesis (H0) is the statement that the value of a population parameter is EQUAL (=) to a claimed value, and the alternative hypothesis (H1) is a statement that the parameter has a value that somehow differs from the null hypothesis (<, >, or ≠). For this example, our null and alternative hypotheses are: H0: p = 0.5 H1: p ≠ 0.5 Is this test two-tailed, left-tailed, or right-tailed? a. Now that we have identified the alternative hypotheses, we can answer this question. Since our alternative hypothesis contains the symbol ≠, this will be a two- tailed test, meaning that the critical region is in both tails. (Note: If the alternative hypothesis contains < or >, the test is either left-tailed or right-tailed – see section 8.1 for further explanation.)

College Algebra
1st Edition
ISBN:9781938168383
Author:Jay Abramson
Publisher:Jay Abramson
Chapter9: Sequences, Probability And Counting Theory
Section9.7: Probability
Problem 4SE: What is the difference between events and outcomes? Give an example of both using the sample space...
icon
Related questions
Topic Video
Question

Example:

Assume that adults were randomly selected for a poll. They were asked if they "favor or oppose using federal tax dollars to fund medical research using stem cells obtained from human embryos.” Of those

polled, 480 were in favor and 394 were opposed. A politician claims that people don’t really understand the stem cell issue and their responses to such questions are random responses equivalent to a coin toss. Use a 0.01 significance level to test the claim that the proportion of subjects who respond in favor is equal to 0.5. What does the result suggest about the politician’s claim?

  1. Following the hypothesis test steps, let’s first identify the claim and the null and alternative hypotheses:

    1. For this example, the original claim is that the proportion of the subjects who responded in favor is equal to 0.5 (half – since the politician compared their responses as equivalent to a coin toss). The symbolic form of the politician’s claim can be expressed as p = 0.5.

    2. Also notice that this hypothesis test is about a proportion – it will be very important for you to identify in each question if you are conducting a hypothesis test about a population proportion, mean, or standard deviation so that you know which StatCrunch directions to follow, and how to analyze your results. In this project, you will only be responsible for testing claims about proportions and means.

    3. The null hypothesis (H0) is the statement that the value of a population parameter is EQUAL (=) to a claimed value, and the alternative hypothesis (H1) is a statement that the parameter has a value that somehow differs from the null hypothesis (<, >, or ≠). For this example, our null and alternative hypotheses are:

      H0: p = 0.5

      H1: p ≠ 0.5

  2. Is this test two-tailed, left-tailed, or right-tailed?

a. Now that we have identified the alternative hypotheses, we can answer this question. Since our alternative hypothesis contains the symbol ≠, this will be a two- tailed test, meaning that the critical region is in both tails. (Note: If the alternative hypothesis contains < or >, the test is either left-tailed or right-tailed – see section 8.1 for further explanation.)

Expert Solution
trending now

Trending now

This is a popular solution!

steps

Step by step

Solved in 4 steps with 3 images

Blurred answer
Knowledge Booster
Hypothesis Tests and Confidence Intervals for Proportions
Learn more about
Need a deep-dive on the concept behind this application? Look no further. Learn more about this topic, statistics and related others by exploring similar questions and additional content below.
Recommended textbooks for you
College Algebra
College Algebra
Algebra
ISBN:
9781938168383
Author:
Jay Abramson
Publisher:
OpenStax
College Algebra (MindTap Course List)
College Algebra (MindTap Course List)
Algebra
ISBN:
9781305652231
Author:
R. David Gustafson, Jeff Hughes
Publisher:
Cengage Learning