T-tests. Daniel Boduszek

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T-tests Daniel Boduszek d.boduszek@interia.eu danielboduszek.com

Presentation Outline Introduction to T-tests Types of t-tests Assumptions Independent samples t-test SPSS procedure Interpretation of SPSS output Presenting results from HMR Paired samples t-test SPSS procedure Interpretation of SPSS output Presenting results from HMR

Introduction T-tests compare the values on some continuous variable for two groups or on two occasions Two types: independent samples t-test compares the mean scores of two different groups of people or conditions paired samples t-test compares the mean scores for the same group of people on two different occasions

Assumptions Independence of observations observations must not be influenced by any other observation (e.g. behaviour of each member of the group influences all other group members) Normal distribution Random Sample (difficult in real-life research) Homogeneity of Variance variability of scores for each of the groups is similar. Levene s test for equality of variances. You want non significant result (Sig. greater than.05)

Independent Samples T-test Research Question: Is there a significant difference in the mean criminal behaviour scores for violent and non-violent offenders?

Independent Samples T-test (SPSS) From the menu click on Analyze then select Compare means then Independent Samples T test

Independent Samples T-test (SPSS) Move continuous DV (recidivism) into the Test variable box And categorical IV (type of criminal) into Grouping variable box

Independent Samples T-test (SPSS) Click on Define groups and type in the numbers used in data set to code each group Group 1 = 1 Group 2 = 2 Click on Continue and OK

Interpretation of SPSS output Checking the information about groups: Means Standard Deviations Number of participants in each group Group Statistics Type of Criminals N Mean Std. Deviation Std. Error Mean Level of Recidivism 1.00 NonV 45 2.7556 1.73409.25850 2.00 Violant 44 4.0000 3.32013.50053

Interpretation of SPSS output Checking assumptions Levene s test for equality of variance (whether the variation of scores for two groups is the same) If Sig. value for Levene s test >.05 use the first line in the table (Equal variance assumed) If Sig. value for Levene s test < or =.05 use the second line in the table (Equal variance not assumed) Independent Samples Test Levene's Test for Equality of Variances t-test for Equality of Means 95% Confidence Interval of the Mean Std. Error Difference F Sig. t df Sig. (2-tailed) Difference Difference Lower Upper Level of Recidivism Equal variances assumed 5.335.023-2.223 87.029-1.24444.55969-2.35690 -.13199 Equal variances not assumed -2.209 64.513.031-1.24444.56334-2.36967 -.11921

Interpretation of SPSS output Differences between groups Check column Sig. (2-tailed) If Sig. value >.05 no significant difference between groups If Sig. value < or =.05 significant difference between groups Independent Samples Test Levene's Test for Equality of Variances t-test for Equality of Means 95% Confidence Interval of the Mean Std. Error Difference F Sig. t df Sig. (2-tailed) Difference Difference Lower Upper Level of Recidivism Equal variances assumed 5.335.023-2.223 87.029-1.24444.55969-2.35690 -.13199 Equal variances not assumed -2.209 64.513.031-1.24444.56334-2.36967 -.11921

Calculating the effect size The formula is: Eta squared = ------------------------- t 2 + (N1 + N2-2) t 2-2.21 2 Eta squared = ---------------------------- =.05-2.21 2 + (45 + 44-2) According to Cohen (1988).01 = small effect.06 = medium effect.14 = large effect

Presenting results An independent samples t-test was conducted to compare the criminal behaviour (recidivism) scores doe violent and non violent offenders. There was a significant difference in score between the two groups of offenders, t(87) = -2.21, p <.05, two-tailed with violent offenders (M = 4.00, SD = 3.32) scoring higher than non violent offenders (M = 2.76, SD = 3.32). The magnitude of the differences in the means (mean difference = -1.24, 95% CI: -2.37 to -.12) was small (eta squared =.05)

Paired samples t-test A Paired samples t-test one group of participants measured on two different occasions or under two different conditions (e.g., pre-test & post-test; Time 1 & Time 2) Research question Is there a significant change in prisoners criminal social identity scores after 2 year sentence in high security prison? Does the process of prisonization have an impact on prisoners criminal identity test scores? You need: 1 categorical IV (Time 1, Time 2) 1 continuous DV (criminal social identity test scores)

Paired samples t-test (SPSS) From the menu click on Analyze then select Compare Means then Paired Samples T test

Paired samples t-test (SPSS) Click on the 2 variables that you are interested in comparing for each subject (criminal identity, Density criminal identity 2) and move them into Paired Variables box Click OK

Interpretation of SPSS output Descriptive Statistics Paired Samples Statistics Mean N Std. Deviation Std. Error Mean Pair 1 Criminal Identity 18.7303 89 8.93762.94739 Criminal Identity2 26.3146 89 9.84031 1.04307 Correlations Paired Samples Correlations N Correlation Sig. Pair 1 Criminal Identity & Criminal Identity2 89.941.000

Interpretation of SPSS output Differences between Time 1 & Time 2 Check column Sig. (2-tailed) If Sig. value >.05 no significant difference If Sig. value < or =.05 significant difference Paired Samples Test Paired Differences 95% Confidence Interval of the Difference Mean Std. Deviation Std. Error Mean Lower Upper t df Sig. (2-tailed) Pair 1 Criminal Identity - Criminal Identity2-7.58427 3.35006.35511-8.28997-6.87857-21.358 88.000

Calculating the effect size The formula is: Eta squared = ------------------------- t 2 + (N - 1) t 2-21.36 2 Eta squared = ---------------------------- =.84-21.36 2 + (88-1) According to Cohen (1988).01 = small effect.06 = medium effect.14 = large effect

Presenting results A paired samples t-test was conducted to evaluate the impact of the prisonization process on prisoners scores on the criminal social identity. There was a significant increase in criminal social identity scores from Time 1 (M = 18.73, SD = 8.94) to Time 2 (M = 26.31, SD = 9.84), t(88) = -21.36, p <.001 (two-tailed). The mean increase in criminal social identity scores was -7.58 with a 95% confidence interval ranging from -8.29 to -6.88. The eta squared statistic (.84) indicated a large effect size.