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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?
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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 = 10 C 5 == 252 2 10 = 1024
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Binomial distribution nCr 10 C 5 = = = 24.6 See Figure 8.2 on page 132…... Task 1. Calculate the other possibilities and their distribution.
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The null hypothesis The assumption in which the variable A is not statistically differ from the variable B. Example 1. The coin guessing experiment H 0 is that the probability of a correct guess is chance level ( =.5) Example 2. A correlational design H 0 is that there is no correlation between the two measured variables (r = 0). (the correlation between SAT and College GPA.) H0H0 Example 3. An experimental design H 0 is that the mean score on the dependent variable is the same in all experimental group (helping behavior between men and women)
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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 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 Example 2. Variable A is statistically correlate with Variable B.
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Testing for Statistical Significance Significance Level (alpha = ) The level in which we are allowed to reject the null hypothesis. Who decides the level? 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. If P value is less than alpha (p <.05)Reject null hypothesis If P value is greater than alpha (p >.05)Fail to reject null hypothesis Statistically Significant Statistically nonsignificant
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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 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
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Type 1 Error & Type 2 Error Type 1 ErrorCorrect Decision probability = Probability = 1- Correct decisionType 2 Error probability = 1 - probability = Scientist’s Decision Reject null hypothesis Fail to reject null hypothesis Null hypothesis is true Null hypothesis is false Type 1 ErrorType 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 = =
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Statistical Significance and the Effect Size ES = Statistical Significance = Effect Size (ES) X Sample Size
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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 Compare p to alpha (.05)P <.05P >.05 Reject null hypothesisFail to reject null hypothesis
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