Survey Methods Design in Psychology.ppt
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1、Survey Methods & Design in Psychology,Lecture 10 ANOVA (2007)Lecturer: James Neill,Overview of Lecture,Testing mean differences ANOVA models Interactions Follow-up tests Effect sizes,Parametric Tests of Mean Differences,One-sample t-test Independent samples t-test Paired samples t-test One-way ANOVA
2、 One-way repeated measures ANOVA Factorial ANOVA Mixed design ANOVA ANCOVA MANOVA Repeated measures MANOVA,Correlational statistics vs tests of differences between groups,Correlation/regression techniques reflect the strength of association between continuous variables Tests of group differences (t-
3、tests, anova) indicate whether significant differences exist between group means,Are The Differences We See Real?,Major Assumptions,Normally distributed variables Homogeneity of variance Robust to violation of assumptions,A t-test or ANOVA is used to determine whether a sample of scores are from the
4、 same population as another sample of scores.(in other words these are inferential tools for examining differences in means),Why a t-test or ANOVA?,t-tests,An inferential statistical test used to determine whether two sets of scores come from the same populationIs the difference between two sample m
5、eans real or due to chance?,Use of t in t-tests,Question: Is the t large enough that it is unlikely that the two samples have come from the same population? Decision: Is t larger than the critical value for t (see t tables depends on critical and N),Ye Good Ol Normal Distribution,Use of t in t-tests
6、,t reflects the ratio of differences between groups to within groups variability Is the t large enough that it is unlikely that the two samples have come from the same population? Decision: Is t larger than the critical value for t (see t tables depends on critical and N),One-tail vs. Two-tail Tests
7、,Two-tailed test rejects null hypothesis if obtained t-value is extreme is either direction One-tailed test rejects null hypothesis if obtained t-value is extreme is one direction (you choose too high or too low) One-tailed tests are twice as powerful as two-tailed, but they are only focused on iden
8、tifying differences in one direction.,Compare one group (a sample) with a fixed, pre-existing value (e.g., population norms)E.g., Does a sample of university students who sleep on average 6.5 hours per day (SD = 1.3) differ significantly from the recommended 8 hours of sleep?,Single sample t-test,Co
9、mpares mean scores on the same variable across different populations (groups) e.g.,Do males and females differ in IQ?Do Americans vs. Non-Americans differ in their approval of George Bush?,Independent groups t-test,Assumptions (Independent samples t-test),IV is ordinal / categorical e.g., gender DV
10、is interval / ratio e.g., self-esteem Homogeneity of Variance If variances unequal (Levenes test), adjustment made Normality t-tests robust to modest departures from normality: consider use of Mann-Whitney U test if severe skewness Independence of observations (one participants score is not dependen
11、t on any other participants score),Do males and females differ in memory recall?,Paired samples t-test,Same participants, with repeated measures Data is sampled within subjects, e.g., Pre- vs. post- treatment ratings Different factors e.g., Voters approval ratings of candidate X vs. Y,Assumptions- p
12、aired samples t-test,DV must be measured at interval or ratio level Population of difference scores must be normally distributed (robust to violation with larger samples) Independence of observations (one participants score is not dependent on any other participants score),Do females memory recall s
13、cores change over time?,Assumptions,IV is ordinal / categorical e.g., gender DV is interval / ratio e.g., self-esteem Homogeneity of Variance If variances unequal, adjustment made (Levenes Test) Normality - often violated, without consequence look at histograms look at skewness look at kurtosis,SPSS
14、 Output: Independent Samples t-test: Same Sex Relations,SPSS Output: Independent Samples t-test: Opposite Sex Relations,SPSS Output: Independent Samples t-test: Opposite Sex Relations,What is ANOVA? (Analysis of Variance),An extension of a t-test A way to test for differences between Ms of: (i) more
15、 than 2 groups, or (ii) more than 2 times or variables Main assumption: DV is metric, IV is categorical,Introduction to ANOVA,Single DV, with 1 or more IVs IVs are discrete Are there differences in the central tendency of groups? Inferential: Could the observed differences be due to chance? Follow-u
16、p tests: Which of the Ms differ? Effect Size: How large are the differences?,F test,ANOVA partitions the sums of squares (variance from the mean) into: Explained variance (between groups) Unexplained variance (within groups) or error variance F represents the ratio between explained and unexplained
17、variance F indicates the likelihood that the observed mean differences between groups could be attributable to chance. F is equivalent to a MLR test of the significance of R.,F is the ratio of between- : within-group variance,Assumptions One-way ANOVA,DV must be: Measured at interval or ratio level
18、Normally distributed in all groups of the IV (robust to violations of this assumption if Ns are large and approximately equal e.g., 15 cases per group) 3. Have approximately equal variance across all groups of the IV (homogeneity of variance) 4. Independence of observations,Example: One-way between
19、groups ANOVA,Does LOC differ across age groups?20-25 year-olds40-45 year olds60-65 year-olds,h2 = SSbetween/SStotal= 395.433 / 3092.983= 0.128Eta-squared is expressed as a percentage: 12.8% of the total variance in control is explained by differences in Age,Which age groups differ in their mean cont
20、rol scores? (Post hoc tests),Conclude: Gps 0 differs from 2; 1 differs from 2,ONE-WAY ANOVA Are there differences in Satisfaction levels between students who get different Grades?,Assumptions - Repeated measures ANOVA,1. Sphericity - Variance of the population difference scores for any two condition
21、s should be the same as the variance of the population difference scores for any other two conditions (Mauchly test of sphericity) Note: This assumption is commonly violated, however the multivariate test (provided by default in SPSS output) does not require the assumption of sphericity and may be u
22、sed as an alternative. When results are consistent, not of major concern. When results are discrepant, better to go with MANOVA Normality,Example: Repeated measures ANOVA,Does LOC vary over a period of 12 months? LOC measures obtained over 3 intervals: baseline, 6 month follow-up, 12 month follow-up
23、.,Mean LOC scores (with 95% C.I.s) across 3 measurement occasions,1-way Repeated Measures ANOVA Do satisfaction levels vary between Education, Teaching, Social and Campus aspects of university life?,Followup Tests,Post hoc: Compares every possible combination Planned: Compares specific combinations,
24、Post hoc,Control for Type I error rate Scheffe, Bonferroni, Tukeys HSD, or Student-Newman-Keuls Keeps experiment-wise error rate to a fixed limit,Planned,Need hypothesis before you start Specify contrast coefficients to weight the comparisons (e.g., 1st two vs. last one) Tests each contrast at criti
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