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When do we use an independent measures ANOVA? |
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Definition
when there is more than 2 groups or levels of the IV |
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What's the difference between independent measures, repeated measures, and mixed ANOVA designs? |
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Definition
independent: repeated: mixed: more than 1 IV at the same time |
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What is generally learned from ANOVA? |
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Definition
Tells whether means of samples that undergo different levels of the IV come from populations with the same or different means. |
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What are the hypotheses for ANOVAs? |
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Definition
H0: μ1 = μ2 = μ3 = …μk H1: At least one μ is different from others. |
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Why do we need ANOVA when a series of t tests would test several hypotheses? |
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Definition
The overall chance of type 1 error is the sum of all individual scores --> if you conduct 5 HT at alpha .05, the end chance of type 1 error is .25. It is also a lot more work. |
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Term
What is the difference between test-wise and experiment-wise alpha level? |
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Definition
test-wise: level of error set for 1 test experiment-wise: level of all tests combined on 1 set of data or study
*every test conducted increases 2nd type of alpha level |
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How does ANOVA help with the experiment-wise alpha level? |
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Definition
makes all comparisons between means simultaneous and keeps alpha at level set by experimentor (even if compare many levels or groups) |
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Term
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Definition
is the variable manipulated – Called a factor in ANOVA designs – May have many factors in experiment |
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Quasi-Independent Variable |
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Definition
not actively manipulated, but may affect experiment (ie gender, age, education, etc) |
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Definition
Variable that designates the groups being compared |
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Between-Treatments Variance |
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Definition
calculate the variance between treatment groups to provie a measure of the overall differences between treatment conditions --> really measures the differences between sample means |
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Within-Treatments Variance |
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Definition
The variability within each sample --> provides a measure of the variability inside each treatment condition |
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Why is variance partitioned in ANOVA? |
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Definition
In this way ANOVA shows if differences between sample means are greater than would be expected by chance. |
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Term
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Definition
The MS value in the denominator of the F-ratio is called the error term. This MS value is intended to measure the amount of error variability - variability in the data for which there is no systematic or predictable explanation. It is used as a standard for determining whether or not the differences between treatments (measured by MSbtwn) are greater than would be expected just by chance. |
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Definition
MSbetween - simply measure how much difference exists between the treatement means. The bigger the mean differences, the bigger the F-ratio. |
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Definition
MSwithin - measures the variance of the scores inside each treatment; that is, the variance for each of the separate samples. In general, the larger the sample variances, the smaller is the F-ratio. |
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What contributes to the between groups source of variance in the independent measures ANOVA? |
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Definition
MSbetween is composed of (SSbetween) / (dfbetween) |
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What contributes to teh within group source of variance in this test? |
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Definition
MS within = (SSwithin) / (dfwithin) |
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Definition
the number of individual treatment conditions; the number of levels of treatments |
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Definition
the number of raw scores in each individual treatment condition |
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Definition
total number of raw scores in the entire study; OR k times n, when n is constant |
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Definition
sum of all scores in the entire study (sigma X) |
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Definition
grand total, sum of all scores in the entire study (sigma T) |
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Definition
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Definition
- family of curves based on 2 separate dfs - tells all values F could be and probability of getting each - all F values are positive because they are variances - positively skewed (always 1-tailed) - median value is about 1; the more extreme the Fobt, the more likely you can reject Ho - Fobt = 1.00 --> retain null |
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Term
Why do we need 2 dfs to look up a critical F value? |
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Definition
df between (numerator) --> top df within (denominator) --> down side |
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Term
What assumptions are required for IM ANOVA? |
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Definition
- scores are drawn from normal distributions (large enough sample size) - homogeneity of variance (errors are unrelated) - observations are independent - violations of assumptions dealt with in separate tests after F test is run
* the only way groups can differ is in their means |
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Term
How is sample variance accounted for in ANOVA? |
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Definition
– MSwithin works like s^2p |
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Definition
– When using 2 groups / treatmen conditions – ANOVA may be used with 2 groups, under certain conditions |
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Definition
- Percentage of variance accounted for due to treatment - Tells how much of variability between scores explained by treatment effect
η = SSb / SSt |
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Term
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Definition
Determine which μ or μs actually different from others – Pairwise comparisons compare just 2 μs –May be planned or unplanned –Must keep experiment-wise alpha in mind to avoid Type I error so don’t run too many… - designed to reduce type 1 error |
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Term
Give 2 examples of post hoc tests |
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Definition
1. Dunn test: divide alpha by number of planned comparisons – Plan 2 post hoc comparisons – 0.05/2 = 0.025 is new alpha for each post hoc test
2. Tukey’s HSD: Single value determines minimum difference between treatments necessary for significance - better for unplanned comparisons HSD = q (sq.rt. MSw/n) |
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