More about Tests! Remember, you are not proving or accepting the null hypothesis. Most of the time, the null means no difference or no change from the.

Slides:



Advertisements
Similar presentations
Statistics.  Statistically significant– When the P-value falls below the alpha level, we say that the tests is “statistically significant” at the alpha.
Advertisements

CHAPTER 21 More About Tests: “What Can Go Wrong?”.
Ch. 21 Practice.
Testing Hypotheses About Proportions Chapter 20. Hypotheses Hypotheses are working models that we adopt temporarily. Our starting hypothesis is called.
+ Chapter 10 Section 10.4 Part 2 – Inference as Decision.
Chapter 10: Hypothesis Testing
HYPOTHESIS TESTING Four Steps Statistical Significance Outcomes Sampling Distributions.
Hypothesis Testing Steps of a Statistical Significance Test. 1. Assumptions Type of data, form of population, method of sampling, sample size.
8-2 Basics of Hypothesis Testing
© 2013 Pearson Education, Inc. Active Learning Lecture Slides For use with Classroom Response Systems Introductory Statistics: Exploring the World through.
Copyright © 2007 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 21 More About Tests.
More About Tests and Intervals
McGraw-Hill/IrwinCopyright © 2009 by The McGraw-Hill Companies, Inc. All Rights Reserved. Chapter 9 Hypothesis Testing.
Overview Definition Hypothesis
Hypothesis Testing Section 8.2. Statistical hypothesis testing is a decision- making process for evaluating claims about a population. In hypothesis testing,
Hypothesis testing is used to make decisions concerning the value of a parameter.
Chapter 8 Hypothesis testing 1. ▪Along with estimation, hypothesis testing is one of the major fields of statistical inference ▪In estimation, we: –don’t.
Fundamentals of Hypothesis Testing: One-Sample Tests
Section 9.1 Introduction to Statistical Tests 9.1 / 1 Hypothesis testing is used to make decisions concerning the value of a parameter.
Tests of significance & hypothesis testing Dr. Omar Al Jadaan Assistant Professor – Computer Science & Mathematics.
1/2555 สมศักดิ์ ศิวดำรงพงศ์
Introduction to Statistical Inferences Inference means making a statement about a population based on an analysis of a random sample taken from the population.
1 Power and Sample Size in Testing One Mean. 2 Type I & Type II Error Type I Error: reject the null hypothesis when it is true. The probability of a Type.
Hypothesis testing Chapter 9. Introduction to Statistical Tests.
Presentation on Type I and Type II Errors How can someone be arrested if they really are presumed innocent? Why do some individuals who really are guilty.
A Brief Introduction to Power Tyrone Li ‘12 and Ariana White ‘12 Buckingham Browne & Nichols School Cambridge, MA.
Hypotheses tests for means
Lecture 16 Dustin Lueker.  Charlie claims that the average commute of his coworkers is 15 miles. Stu believes it is greater than that so he decides to.
Errors & Power. 2 Results of Significant Test 1. P-value < alpha 2. P-value > alpha Reject H o & conclude H a in context Fail to reject H o & cannot conclude.
Statistical Hypotheses & Hypothesis Testing. Statistical Hypotheses There are two types of statistical hypotheses. Null Hypothesis The null hypothesis,
Basics of Hypothesis Testing 8.2 Day 2. Homework Answers.
CHAPTER 9 Testing a Claim
Hypothesis Testing State the hypotheses. Formulate an analysis plan. Analyze sample data. Interpret the results.
Statistics 101 Chapter 10 Section 2. How to run a significance test Step 1: Identify the population of interest and the parameter you want to draw conclusions.
CHAPTER 9 Testing a Claim
Unit 8 Section 8-3 – Day : P-Value Method for Hypothesis Testing  Instead of giving an α value, some statistical situations might alternatively.
Chap 8-1 Fundamentals of Hypothesis Testing: One-Sample Tests.
Copyright © 2011 Pearson Education, Inc. Putting Statistics to Work.
Ex St 801 Statistical Methods Inference about a Single Population Mean.
Slide 21-1 Copyright © 2004 Pearson Education, Inc.
Hypothesis Testing Errors. Hypothesis Testing Suppose we believe the average systolic blood pressure of healthy adults is normally distributed with mean.
+ The Practice of Statistics, 4 th edition – For AP* STARNES, YATES, MOORE Unit 5: Hypothesis Testing.
AP Statistics Chapter 11 Notes. Significance Test & Hypothesis Significance test: a formal procedure for comparing observed data with a hypothesis whose.
European Patients’ Academy on Therapeutic Innovation The Purpose and Fundamentals of Statistics in Clinical Trials.
Hypothesis Testing Steps for the Rejection Region Method State H 1 and State H 0 State the Test Statistic and its sampling distribution (normal or t) Determine.
If we fail to reject the null when the null is false what type of error was made? Type II.
Chapter 9: Hypothesis Tests for One Population Mean 9.2 Terms, Errors, and Hypotheses.
The Practice of Statistics, 5th Edition Starnes, Tabor, Yates, Moore Bedford Freeman Worth Publishers CHAPTER 9 Testing a Claim 9.1 Significance Tests:
Section 9.1 First Day The idea of a significance test What is a p-value?
Hypothesis Tests for 1-Proportion Presentation 9.
More about tests and intervals CHAPTER 21. Do not state your claim as the null hypothesis, instead make what you’re trying to prove the alternative. The.
Tests about a Population Proportion Textbook Section 9.2.
A.P. STATISTICS EXAM REVIEW TOPIC #2 Tests of Significance and Confidence Intervals for Means and Proportions Chapters
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 21 More About Tests and Intervals.
+ Homework 9.1:1-8, 21 & 22 Reading Guide 9.2 Section 9.1 Significance Tests: The Basics.
CHAPTER 9 Testing a Claim
Section Testing a Proportion
CHAPTER 9 Testing a Claim
A Closer Look at Testing
P-value Approach for Test Conclusion
CHAPTER 9 Testing a Claim
Chapter 9: Hypothesis Testing
Statistical Inference
CHAPTER 9 Testing a Claim
More About Tests Notes from
More on Testing 500 randomly selected U.S. adults were asked the question: “Would you be willing to pay much higher taxes in order to protect the environment?”
CHAPTER 9 Testing a Claim
Power and Error What is it?.
CHAPTER 9 Testing a Claim
CHAPTER 9 Testing a Claim
Presentation transcript:

More about Tests! Remember, you are not proving or accepting the null hypothesis. Most of the time, the null means no difference or no change from the previous parameter. If we reject the null, we are concluding that there has been a change or something affected the outcome. As a Statistician, you usually want to prove the alternative hypothesis. i.e. Think of a pill to help lose weight. The null hypothesis might be  = 0 lbs lost and the alternative hypothesis would be  > 0. The company that produces the pill would want to prove the alternative hypothesis to justify their claim that their pill helps people lose weight.

What does p-value mean? The p-value is the probability that a statistic or something more extreme occurs provided the null hypothesis is true. Therefore, if the p-value is very low (  =.05), we feel very comfortable in rejecting the null hypothesis. If we reject the null hypothesis, then we say the test is “significant at the  level”.

Confidence Intervals and Hypothesis Tests A confidence interval can be used instead of a test. If the parameter (null hypothesis) is in the interval, then we would fail to reject the null hypothesis.  1 sided2 sided

Making Errors on Hypothesis Tests There are two types of errors a statistician can make when doing tests: I. The null hypothesis is true, but we mistakenly reject it. II. The null hypothesis is false, but we fail to reject it. These two types of errors are called Type I and Type II errors.

Possible outcomes Type I ErrorOK Type II Error H o is True H o is false Reject H o Fail to Reject H o Outcome of test Reality

The probability of making a Type I error = . That is the probability of rejecting a true null hypothesis is . Why is that? The probability of making a Type II error = β. We will not have to calculate β, but we need to know a few facts about what will effect β. The probability of a Type II error can be lowered by:  Having a larger   Having a larger sample size  the true parameter being significantly different than the null hypothesis. (The distance between the true parameter and the null hypothesis is called the effect size.)

Power of a test: The power of a test is the probability that a test correctly rejects a false null hypothesis. Power = 1 – β The Power of a test is increase by lowering β. therefore, the following will increase the power:  Having a larger   Having a larger sample size  If the true parameter is significantly different than the null hypothesis (Effect Size is large)

Example: A bank wants to encourage more customers to make payments on delinquent balances by sending them a video tape urging them to set up a payment plan. Based on their results, the statistician for the bank found a 90% confidence interval for the success rate to be (0.29, 0.45). Their old send-a-letter method had worked 30% of the time. a)Is this evidence that the video worked better than the old method? Why or why not? b)What is a Type I error in the context of this situation? c)What is a Type II error in the context of this situation? d)If the video tape strategy really works well, actually getting 60% of the customers to set up a payment plan, would the power of the test be higher or lower compared to a 32% pay off rate? Explain.

Example: Soon after the Euro was introduced as currency in Europe, it was widely reported that someone spun a Euro coin 250 times and gotten heads 140 times. We wish to test a hypothesis about the fairness of spinning a Euro. a)Estimate the true proportion of heads using a 95% confidence interval. b)Does your confidence interval provide evidence that the Euro is unfair? Explain. c)What is the significane level of this test? d)What would a type I error be in context? e)What would a type II error be in context?