1 / 10

Chapter 8: Hypothesis Testing and Inferential Statistics

Chapter 8: Hypothesis Testing and Inferential Statistics. What are inferential statistics, and how are they used to test a research hypothesis? What is the null hypothesis? What is alpha? What is the p-value, used in most hypothesis test?

quilla
Download Presentation

Chapter 8: Hypothesis Testing and Inferential Statistics

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 8: Hypothesis Testing and Inferential Statistics • What are inferential statistics, and how are they used to test • a research hypothesis? • What is the null hypothesis? • What is alpha? • What is the p-value, used in most hypothesis test? • What are Type 1 and Type 2 errors, and what is the relationships • between them • What is beta, and how does beta relate to the power of a statistical • test? • What is the effect size statistic, and how is it used?

  2. Sampling Distribution Sampling Distribution The distribution of all of the possible values of a statistic. Example. To examine your friend’s ESP aptitude, you ask your friend to guess on ten coin flips (heads and tails) nCr = 210 = 1024 10C5 = = 252

  3. Binomial distribution See Figure 8.2 on page 132…... nCr 10C5 = = 24.6 = Task 1. Calculate the other possibilities and their distribution.

  4. The null hypothesis The assumption in which the variable A is not statistically differ from the variable B. H0 Example 1. The coin guessing experiment H0 is that the probability of a correct guess is chance level ( = .5) Example 2. A correlational design H0 is that there is no correlation between the two measured variables (r = 0). (the correlation between SAT and College GPA.) Example 3. An experimental design H0 is that the mean score on the dependent variable is the same in all experimental group (helping behavior between men and women)

  5. Reject null hypothesis and fail to reject null hypothesis Reject null hypothesis = There is a significant statistical difference between A and B. Example 1. Observed data is statistically differ from the chance level Example 2. Variable A is statistically correlate with Variable B. Fail to reject null hypothesis = there is no significant statistical difference between A and B Example 1. Observed data is not differ from the chance level. Example 2. Variable A is no correlation to Variable B

  6. Testing for Statistical Significance Significance Level (alpha = ) Who decides the level? The level in which we are allowed to reject the null hypothesis. The researcher By convention, alpha is normally set to  = .05 Probability value (p value) The likelihood of an observed statistic occurring on the basis of the sampling distribution. Statistically Significant If P value is less than alpha (p < .05) Reject null hypothesis Statistically nonsignificant If P value is greater than alpha (p > .05) Fail to reject null hypothesis

  7. Comparing the P-value to Alpha Example. The coin guessing experiment (Take a look at Figure 8.2!) P value for 10 correct guesses = .001 P value for 9 and 10 correct guesses = .01 + . 001 = .011 P value for 8, 9, and 10 correct guesses = .044 + .01 + .001= .055 P value for 7, 8, 9, and 10 correct guesses = .117 + .044 + .01 + .001 = .172 P < .05 P < .05 P > .05 P > .05 Two-sided p-value P value for number of guesses as extreme as 10 P value for number of guesses as extreme as 9 P value for number of guesses as extreme as 8 P value for number of guesses as extreme as 7

  8. Type 1 Error & Type 2 Error Scientist’s Decision Reject null hypothesis Fail to reject null hypothesis Type 1 Error Correct Decision probability =  Probability = 1-  Correct decision Type 2 Error probability = 1 -  probability =  Null hypothesis is true Null hypothesis is false Type 1 Error =  Type 2 Error =  Cases in which you reject null hypothesis when it is really true Cases in which you fail to reject null hypothesis when it is false

  9. Statistical Significance and the Effect Size Statistical Significance = Effect Size (ES) X Sample Size ES =

  10. Hypothesis Testing Flow Chart Develop research hypothesis & null hypothesis Set alpha (usually .05) Calculate power to determine the sample size Collect data & calculate statistic and p P < .05 Compare p to alpha (.05) P > .05 Reject null hypothesis Fail to reject null hypothesis

More Related