What happens to statistical significance when there is a large sample size?
Large sample size makes it more likely to find statistical significance. As size grows, significance can be found for even very small differences.
How are the mean and standard deviation affected if a constant is subtracted from every score?
All operations (add, subtract, x, divide) affect mean but only multiplication and division affect standard deviation.
Criterion contamination. Refers to:
Using an ANOVA a pooled error term is justified when:
When things Re equal they can be pooled. When unequal, treat them separately.
Match definitions below with std deviation, std error of measurement, std error of estimate, std error of the mean
What is the most significant problem in using a series of t tests to analyze a data set?
1
ANOVA reduces type I error, which is additive.
More tests ya do more chance of error.
How are the mean and std deviation effected if a constant is subtracted from every score?
3
Single subject research design, which is the most significant problem?
1
The association between two variables, when ea variables association w another variable has been removed is known as: A.analysis of covariance B. partial correlation C. Semi-partial correlation D. Coefficient of determination
B. this is correlation between 2 variables when the association between a third variable and ea of the two original variables has been partialed out.
Cluster sampling involved what kind of clusters?
Naturally occuring groups and then randomly selecting from the clusters. Typically all the subjects within the clusters are sampled.
Standard errors of mean, measurement, and estimate express error in terms of:
Sampling error applies to std error of mean only
Systematic…applies to none
Testing situation…source of error for std error of measurement only.
Std error of measurement is significantly influenced by reliability coefficient, the range of std error of measurement is: A. -1 to 1 B. 0 to 1 C. 0 to sdx D. 0 to sdy
C
Range of validity coefficient is -1 to 1
Reliability coefficient is 0 to 1.
D is range of std error of estimate.
Taylor Russell tables evaluate incremental validity: base rate, selection ratio, criterion related validity
A. Construct validity
B. criterion related validity
C. Test retest
D. Internal consistency reliability
Selection ratio…ratio of number of openings to number of apps
Low optimizes incremental validity
Higher criterion validity, better incremental.
For each a score, variability of b scores is equal to total variability of b scores. Conclude: A. Error; unlikely B. moderate positive correlation C. Mod negative correlation D. No correlation
D…for any a, end up w all possible b. scatter plot
Knowing a tells u nothing of b
Which will increase std error of mean?
Increase sd of population and decrease sample size
Decrease sd of population and increase sample siZe
Increase both
Decrease both
Std error of mean increases when sd of pop is increased and n is reduced.
Increasing test length: A. Affects reliability only B. reliability more than validity C. Equal effect D. Neither
B. effect on both but validity has a ceiling due to the reliability.
Two way ANOVA find differences. U conclude:
A. Main effects and may:not have intx effects
B. intx effects and may/not have main effects
C. Can be any combo of main effects and interactions
D. Neither main effects or interaction effects because may be due to chance.
C. 3 F ratios so 4 possibilities of significance. Two possible main effects and a possible intx effect. Can be any combo. Can have intx but no main effects etc..if one way ANOVA can’t detect intx effect.
Abab design the concern is: A. History and maturation B. regression and diffusion C. Failure of IV to return to baseline D. Failure of dv to return to baseline
4
Which circumstance would it be problematic to use chi square?
A. When looking for differences between groups
B. ordinal data
C. Repeater observations made
D. More than one iv
C. One of the main assumptions is independence of observations. Can’t use when repeated observations are made, like a pre and post test
Chi square is non parametric test of differences used for nominal or categorical data. Can use with ordinal. Use multiple chi when more than one IV
Shape of a z score distribution is: Normal Skewed Flat Can't be determined
Shape follows the raw score distribution which is not given.
Flat is for percentile ranks.
Single subjects design involve an approach: Ipsitive Idiographic Normative Nomothetic
Idiographic describes single subject approaches
Nomothetic group approach
Normative…data compared with in and between subjects
Ipsitive forced choice format. Only gives strengths and interests within a subject and can’t be used for comparisons.
3 levels of an IV and a continuous dv should be analyzed using what stats? One way ANOVA Factorial ANOVA Chi square Manova
1. One IV w 3 levels; 1 DV continuous or scored numerically One way ANOVA used w 1IV and 1DV Chi is nominal data or categorical Manova had more than one dv Two way ANOVA is 2 IV and one dv Factorial ANOVA more 1 IV and 1 dv
Relationship between education Nd income for clinical psychologists is?
Correlation between education and income in general?
2. Broader .3 to .5
Changes in the Variable causes changes in the
Variable.
Independent
Dependent
IV is input and causes changes in
Dv is output
IV is manipulated
Dv is measured
Correlational research variables are not manipulated. Input variable is IV . Called predictor variables.
Outcome variables are dv or criterion variables.
Regardless…what effect does (IV) have on (Dv).