Chapter 10 & 11- t tests ( Dependent Measures; Intro to Analysis of Variance Flashcards
related sample
also called a dependent sample, participants are related. Participants can be related in one of two ways: They are observed in more than one group (a repeated-measures design), or they are matched, experimentally or naturally, based on common characteristics or traits (a matched-pairs design).
repeated-measures design
a research design in which the same participants are observed in each treatment. Two types of repeated-measures designs are the pre-post design and the within-subjects design.
pre-post design
a type of repeated-measures design in which researchers measure a dependent variable for participants before (pre) and after (post) a treatment.
within-subjects design
a type of repeated-measures design in which researchers observe the same participants across many treatments but not necessarily before and after a treatment.
matched-pairs design
also called the matched-subjects design or matched-samples design, is a research design in which participants are selected and then matched, experimentally or naturally, based on common characteristics or traits.
related-samples t test
a statistical procedure used to test hypotheses concerning two related samples selected from populations in which the variance in one or both populations is unknown.
difference score
a score or value obtained by subtracting one score from another. In a related-samples t test, difference scores are obtained prior to computing the test statistic.
error ( t-test)
For a t test, the term error refers to any unexplained difference that cannot be attributed to, or caused by, having different treatments. The standard error of the mean is used to measure the error or unexplained differences in a statistical design.
estimated standard error for difference scores (sMD)
an estimate of the standard deviation of a sampling distribution of mean difference scores. It is an estimate of the standard error or standard distance that the mean difference scores deviate from the mean difference score stated in a null hypothesis.
There are two assumptions we make to compute the related-samples t test:
Normality. We assume that data in the population of difference scores are normally distributed. Again, this assumption is most important for small sample sizes. With larger samples (n > 30), the standard error is smaller, and this assumption becomes less critical as a result.
Independence within groups. The samples are related or matched between groups. However, we must assume that difference scores were obtained from different individuals within each group or treatment.
levels of the factor
symbolized as k, are the number of groups or different ways in which an independent or quasi-independent variable is observed.
analysis of variance (ANOVA)
a statistical procedure used to test hypotheses for one or more factors concerning the variance among two or more group means (k ≥ 2) where the variance in one or more populations is unknown.
one-way between-subjects ANOVA
a statistical procedure used to test hypotheses for one factor with two or more levels concerning the variance among group means. This test is used when different participants are observed at each level of a factor and the variance in any one population is unknown.
source of variation
any variation that can be measured in a study. In the one-way between-subjects ANOVA, there are two sources of variation: variation attributed to differences between group means and variation attributed to error
Between-groups variation
the variation attributed to mean differences between groups.