1 / 34

Review of T-tests

Review of T-tests. And then…..an “F” for everyone. T-Tests. 1 sample t-test ( univariate t-test) Compare sample mean and population mean on same variable Assumes knowledge of population mean (rare) 2-sample t-test ( bivariate t-test) Compare two sample means (very common)

jewel
Download Presentation

Review of T-tests

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. Review of T-tests And then…..an “F” for everyone

  2. T-Tests • 1 sample t-test (univariate t-test) • Compare sample mean and population mean on same variable • Assumes knowledge of population mean (rare) • 2-sample t-test (bivariate t-test) • Compare two sample means (very common) • Nominal (Dummy) IV and I-R Dependent Variable • Difference between means across categories of IV • Do males and females differ on #hours watching TV?

  3. The t distribution • Unlike Z, the t distribution changes with sample size (technically, df) • As sample size increases, the t-distribution becomes more and more “normal” • At df = 120, tcritical values are almost exactly the same as zcriticalvalues

  4. t as a “test statistic” • All test statistics indicate how different our finding is from what is expected under null • Mean differences under null hypothesis? ZERO • t indicates how different our finding is from zero • There is an exact probability associated with every value of a test statistic • One route is to find a “critical value” for a test statistic that is associated with stated alpha • What t value is associated with .05 or .01 • SPSS generates the exact probability associated with any value of a test statistic

  5. t-score is “meaningful” • Measure of difference in numerator (top half) of equation • Denominator = convert/standardize difference to “standard errors” rather than original metric • Imagine mean differences in “yearly income” versus differences in “# cars owned in lifetime” • Very different metric, so cannot directly compare (e.g., a difference of “2” would have very different meaning) • t = the number of standard errors that separates means • One sample = x versus µ • Two sample = xmales vs. xfemales

  6. t-testing in SPSS • Analyze compare means  independent samples t-test • Must define categories of IV (the dummy variable) • How were the categories numerically coded? • Output • Group Statistics = mean values • Levine’s test • Not real important, if significant, use t-value and sig value from “equal variances not assumed” row • t = “tobtained” • no need to find “t-critical” as SPSS gives you “sig” or the exact probability of obtaining the tobtained under the null

  7. 2-Sample Hypothesis Testing in SPSS • Independent Samples t Test Output: • Testing the Ho that there is no difference in number the number of prior felonies in a sample of offenders who went through “drug court” as compared to a control group.

  8. Interpreting SPSS Output • Difference in mean # of prior felonies between those who went to drug court & control group

  9. Interpreting SPSS Output • t statistic, with degrees of freedom

  10. Interpreting SPSS Output • “Sig. (2 tailed)” • The exact probability of obtaining this mean difference (and associated t-value) under the null hypothesis

  11. Significance (“sig”) value & Probability • Number under “Sig.” column is the exact probability of obtaining that t-value ( or of finding that mean difference) if the null is true • When probability > alpha, we do NOT reject H0 • When probability < alpha, we DO reject H0 • As the test statistics (here, “t”) increase, they indicate larger differences between our obtained finding and what is expected under null • Therefore, as the test statistic increases, the probability associated with it decreases

  12. SPSS and 1-tail / 2-tail • SPSS only reports “2-tailed” significant tests • To obtain a 1-tail test simple divide the “sig value” in half • Sig. (2 tailed) = .10  Sig 1-tail = .05 • Sig. (2 tailed) = .03  Sig 1-tail = .015

  13. Factors in the Probability of Rejecting H0 For T-tests • The size of the observed difference(s) 2. The alpha level 3. The use of one or two-tailed tests 4. The size of the sample

  14. SPSS EXAMPLE Data from one of our graduate students’ survey of you deviants. Go to www.d.umn.edu/~jmaahs and get “t-test example” data and open into SPSS H1: Sex is related to GPA H2: Those who use Adderall are more likely to engage in other sorts of crime Use Alpha = .01

  15. Analysis of Variance • What happens if you have more than two means to compare? • IV (grouping variable) = more than two categories • Examples • Risk level (low medium high) • Race (white, black, native American, other) • DV  Still I/R (mean) • Results in F-TEST

  16. ANOVA = F-TEST • The purpose is very similar to the t-test • HOWEVER • Computes the test statistic “F” instead of “t” • And does this using different logic because you cannot calculate a single distance between three or more means.

  17. ANOVA • Why not use multiple t-tests? • Error compounds at every stage  probability of making an error gets too large • F-test is therefore EXPLORATORY • Independent variable can be any level of measurement • Technically true, but most useful if categories are limited (e.g., 3-5).

  18. Hypothesis testing with ANOVA: • Different route to calculate the test statistic • 2 key concepts for understanding ANOVA: • SSB – between group variation (sum of squares) • SSW – within group variation (sum of squares) • ANOVA compares these 2 type of variance • The greater the SSB relative to the SSW, the more likely that the null hypothesis (of no difference among sample means) can be rejected

  19. Terminology Check • “Sum of Squares” = Sum of Squared Deviations from the Mean = (Xi - X)2 • Variance = sum of squares divided by sample size =  (Xi - X)2 = Mean Square N • Standard Deviation = the square root of the variance = s • ALL INDICATE LEVEL OF “DISPERSION”

  20. The F Ratio • Indicates the variance between the groups, relative to variance within the groups F = Mean square between Mean square within • Between-group variance tells us how different the groups are from each other • Within-group variance tells us how different or alike the cases are as a whole sample

  21. Example: Between-Group vs.Within-Group Variance Say we wanted to examine whether there are differences in the number of drinks consumed per week by year in school: 2 sets of statistics: A)SophJuniorSenior Mean 4.0 5.1 4.7 S.D. 0.8 1.0 1.2 B)SophJuniorSenior Mean 4.0 9.3 8.2 S.D. 0.5 0.7 0.5

  22. ANOVA • Example 2 • Recidivism, measured as mean # of crimes committed in the year following release from custody: • 90 individuals randomly receive 1of the following sentences: • Prison (mean = 3.4) • Split sentence: prison & probation (mean = 2.5) • Probation only (mean = 2.9) • These groups have different means, but ANOVA tells you whether they are statistically significant – bigger than they would be due to chance alone

  23. # of New Offenses: Demo ofBetween & Within Group Variance 2.0 2.5 3.0 3.5 4.0 GREEN: PROBATION (mean = 2.9)

  24. # of New Offenses: Demo ofBetween & Within Group Variance 2.0 2.5 3.0 3.5 4.0 GREEN: PROBATION (mean = 2.9) BLUE: SPLIT SENTENCE (mean = 2.5)

  25. # of New Offenses: Demo ofBetween & Within Group Variance 2.0 2.5 3.0 3.5 4.0 GREEN: PROBATION (mean = 2.9) BLUE: SPLIT SENTENCE (mean = 2.5) RED: PRISON (mean = 3.4)

  26. # of New Offenses: What would less “Within group variation” look like? 2.0 2.5 3.0 3.5 4.0 GREEN: PROBATION (mean = 2.9) BLUE: SPLIT SENTENCE (mean = 2.5) RED: PRISON (mean = 3.4)

  27. ANOVA • Example, continued • Differences (variance) between groups is also called “explained variance” (explained by the sentence different groups received). • Differences within groups (how much individuals within the same group vary) is referred to as “unexplained variance” • Differences among individuals in the same group can’t be explained by the different “treatment” (e.g., type of sentence)

  28. F STATISTIC • When there is more within-group variance than between-group variance, we are essentially saying that there is more unexplained than explained variance • In this situation, we always fail to reject the null hypothesis • This is the reason the F(critical) table (Healey Appendix D) has no values <1

  29. SPSS EXAMPLE • Example: • 1994 county-level data (N=295) • Sentencing outcomes (prison versus other [jail or noncustodial sanction]) for convicted felons • Breakdown of counties by region:

  30. SPSS EXAMPLE • Question: Is there a regional difference in the percentage of felons receiving a prison sentence? • (0 = none; 100 = all) • Null hypothesis (H0): • There is no difference across regions in the mean percentage of felons receiving a prison sentence. • Mean percents by region:

  31. SPSS EXAMPLE • These results show that we can reject the null hypothesis that there is no regional difference among the 4 sample means • The differences between the samples are large enough to reject Ho • The F statistic tells you there is almost 20 X more between group variance than within group variance • The number under “Sig.” is the exact probability of obtaining this F by chance A.K.A. “VARIANCE”

  32. ANOVA: Post hoc tests • The ANOVA test is exploratory • ONLY tells you there are sig. differences between means, but not WHICH means • Post hoc (“after the fact”) • Use when F statistic is significant • Run in SPSS to determine which means (of the 3+) are significantly different

  33. OUTPUT: POST HOC TEST • This post hoc test shows that 5 of the 6 mean differences are statistically significant (at the alpha =.05 level) • (numbers with same colors highlight duplicate comparisons) • p value (info under in “Sig.” column) tells us whether the difference between a given pair of means is statistically significant

  34. ANOVA in SPSS • STEPS TO GET THE CORRECT OUTPUT… • ANALYZE  COMPARE MEANS  ONE-WAY ANOVA • INSERT… • INDEPENDENT VARIABLE IN BOX LABELED “FACTOR:” • DEPENDENT VARIABLE IN THE BOX LABELED “DEPENDENT LIST:” • CLICK ON “POST HOC” AND CHOOSE “LSD” • CLICK ON “OPTIONS” AND CHOOSE “DESCRIPTIVE” • YOU CAN IGNORE THE LAST TABLE (HEADED “Homogenous Subsets”) THAT THIS PROCEDURE WILL GIVE YOU

More Related