What is t test Types of t test TTEST function T-test ToolPak 2
In most cases, the z-test requires more information than we have available We do inferential statistics to learn about the unknown population but, ironically, we need to know characteristics of the population to make inferences about it Enter the t-test: “estimate what you don’t know” 3
Employed by Guinness Brewery, Dublin, Ireland, from 1899 to Developed t-test around 1905, for dealing with small samples in brewing quality control. Published in 1908 under pseudonym “Student” (“Student’s t-test”) 4
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Degrees of freedom describes the number of scores in a sample that are free to vary. degrees of freedom = df = n-1 The larger, the better 6
Very similar like z test Use sample statistics instead of population parameters (mean and standard deviation) Evaluate the result through t test table instead of z test table 7
We show 26 babies the two pictures at the same time (one with his/her mother, the other a scenery picture) for 60 seconds, and measure how long they look at the facial configuration. Our null assumption is that they will not look at it for longer than half the time, μ = 30 Our alternate hypothesis is that they will look at the face stimulus longer and face recognition is hardwired in their brain, not learned (directional) Our sample of n = 26 babies looks at the face stimulus for M = 35 seconds, s = 16 seconds Test our hypotheses ( α =.05, one-tailed) 8
Sentence: Null: Babies look at the face stimulus for less than or equal to half the time Alternate: Babies look at the face stimulus for more than half the time Code Symbols: 9
Population variance is not known, so use sample variance to estimate n = 26 babies; df = n-1 = 25 Look up values for t at the limits of the critical region from our critical values of t table Set α =.05; one-tailed tcrit =
Central Limit Theorem μ = 30 s M =s/ =16/ = 3.14 11
The tobt=1.59 does not exceed tcrit=1.708 ∴ We must retain the null hypothesis Conclusion: Babies do not look at the face stimulus more often than chance, t(25) = +1.59, n.s., one-tailed. Our results do not support the hypothesis that face processing is innate. 12
A research design that uses a separate sample for each treatment condition is called an independent-measures (or between-subjects) research design. 13
The goal of an independent-measures research study: To evaluate the difference of the means between two populations. Mean of first population: μ 1 Mean of second population: μ 2 Difference between the means: μ 1- μ 2 14
Null hypothesis: “no change = no effect = no difference” H0: μ 1- μ 2 = 0 Alternative hypothesis: “there is a difference” H1: μ 1- μ 2 ≠ 0 15
Value for degrees of freedom: df = df1 + df2 16
Group 1 Group
Step 1: A statement of the null and research hypotheses. Null hypothesis: there is no difference between two groups Research hypothesis: there is a difference between the two groups 18
Step 2: setting the level of risk (or the level of significance or Type I error) associated with the null hypothesis
Step 3: Selection of the appropriate test statistic Determine which test statistic is good for your research Independent t test 20
Step 4: computation of the test statistic value t=
Step 5: determination of the value needed for the rejection of the null hypothesis T Distribution Critical Values Table 22
Step 5: (cont.) Degrees of freedom (df): approximates the sample size Group 1 sample size -1 + group 2 sample size -1 Our test df = 58 Two-tailed or one-tailed Directed research hypothesis one-tailed Non-directed research hypothesis two-tailed 23
Step 6: A comparison of the obtained value and the critical value 0.14 and If the obtained value > the critical value, reject the null hypothesis If the obtained value < the critical value, retain the null hypothesis 24
Step 7 and 8: make a decision What is your decision and why? 25
How to interpret t (58) = 0.14, p>0.05, n.s. 26
T.TEST (array1, array2, tails, type) array1 = the cell address for the first set of data array2 = the cell address for the second set of data tails: 1 = one-tailed, 2 = two-tailed type: 1 = a paired t test; 2 = a two-sample test (independent with equal variances); 3 = a two-sample test with unequal variances 27
It does not compute the t value It returns the likelihood that the resulting t value is due to chance (the possibility of the difference of two groups is due to chance) 28
Select t-Test: Two-Sample Assuming Equal Variances t-Test: Two-Sample Assuming Equal Variances Variable 1Variable 2 Mean Variance Observations30 Pooled Variance Hypothesized Mean Difference0 df58 t Stat P(T<=t) one-tail t Critical one-tail P(T<=t) two-tail t Critical two-tail
If two groups are different, how to measure the difference among them Effect size ES: effect size : the mean for Group 1 : the mean for Group 2 SD: the standard deviation from either group 30
A small effect size ranges from 0.0 ~ 0.2 Both groups tend to be very similar and overlap a lot A medium effect size ranges from 0.2 ~ 0.5 The two groups are different A large effect size is any value above 0.50 The two groups are quite different ES=0 the two groups have no difference and overlap entirely ES=1 the two groups overlap about 45% 31