Download presentation
Presentation is loading. Please wait.
Published byJaquan Leedom Modified over 10 years ago
1
Comparing Two Means: One-sample & Paired-sample t-tests Lesson 12
2
Inferential Statistics n Hypothesis testing l Drawing conclusions about differences between groups l Are differences likely due to chance? n Comparing means l t-test: 2 means l Analysis of variance: 2 or more means ~
3
Comparing 2 means: t-tests n One-sample t-test l Is sample likely from particular population? n Paired-Sample t-test l 2 dependent (related) samples n Independent-samples t-test l 2 unrelated samples ~
4
The One-sample t-test n Evaluating hypothesis about population l taking a single sample l Does it likely come from population? n Test statistics z test if known t test if unknown ~
5
t statistic
6
Example: One-sample t-test n Survey: college students study 21 hr/wk l Do Coe students study 21 hrs/week? Select sample (n = 16) unknown n Nondirectional hypothesis: H 0 : = 21; H 1 : 21 l reject H 0 if increase or decrease n PASW/SPSS: Test value = 21 l Assumed from H 0 ~
7
PASW One Sample T Test n Menu l Analyze l Compare Means l One-Sample T Test n Dialog box l Test Variable(s) (DV) Test Value (value of testing against) l Options (to change confidence intervals) ~
8
PASW Output *1-tailed probability: divide Sig. 2-tailed by 2
9
Paired-Samples t-tests n 2 samples are statistically related l Less affected by individual differences l reduces variance due to error n Repeated-measures l 2 measurements on same individual n Matched-subjects l Match pairs on some variable(s) l Split pairs into 2 groups ~
10
Difference Scores n Find difference between each score l D = X 2 - X 1 l Requires n 1 scores equal n 2 scores n Calculate mean D l n And standard deviation of D l ~l ~
11
Repeated-measures n 2 measurements of same individual n Pretest-posttest design l measure each individual twice l pretest treatment posttest l compare scores ~
12
Matched-subjects n Match individuals on important characteristic l individuals that are related l IQ, GPA, married, etc n Assign to different treatment groups l each group receives different levels of independent variable ~
13
Assumptions: Related Samples n Population of difference scores is normal n Observations within each treatment independent l scores for each subject in a group is independent of other subjects scores ~
14
Related-samples Hypotheses n Nondirectional H 0 : D = 0 H 1 : D 0 n Directional H 0 : D > 0 H 1 : D < 0 l Remember: it depends on the direction of the prediction ~
15
Sample Statistics n Mean difference n Mean for single sample
16
Standard Deviation: Related-samples Single sample
17
Estimated Standard Error n Calculate same as single sample l use standard deviation of difference scores
18
Test Statistic n Related-samples t test Since D = 0
19
Example n Does exercising longer have greater health benefits? n Participants l 7 pairs of people matched on age, sex, & weight n Manipulation (IV) l 1 of each pair exercised 2 hrs/week l 1 of each pair exercised 5 hrs/week n Outcome (DV): Health rating ~
20
PASW Paired-Sample T Test n Data entry l 1 column each DV n Menu l Analyze l Compare Means l Paired-Sample T Test n Dialog box l Paired Variable(s) (DV) l Options (to change confidence intervals) ~
21
PASW Output
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.