Describe Experimental Designs: (5)
Experimental Group Designs is highly _________________ and has the highest ___________ _______________ if well designed.
Highly controlled: highest internal validity if well designed
What makes the Experimental Group design Highly controlled and highest internal validity? (3)
What makes Quasi-experimental design weaker than Experimental design?
What are two types of assignments in Quasi-Experiments? (Consequences and Examples)
A) no control group/condition
Consequence: no comparison group
e.g., simple pretest-treat-posttest; all participants experience IV
B) no random assignment
Consequence: possibly non-equivalent groups
Examples
Naturally occurring
E.g., treatment 1 in school ‘A’, treatment 2 in school ‘B’
People on waiting list
History control group – file review of patients before offered experimental treatment
Those who declined treatment as control group
What is the internal Validity in Quasi-Experimental designs?
Internal validity & confidence in results is reduced
Less faith in attributing the cause of the change the treatment
How can we increase validity in quasi-experimental studies? (3)
What is Between Subjects design?
What is the difference between N and n in group designs?
‘N’ – total number of participants in study
‘n’ – number of participants in each group
What is the difference between N and n in group designs?
‘N’ – total number of participants in study
‘n’ – number of participants in each group
What are the assumptions in Experimental Group designs?
What is Within Subject/Related Samples/ Repeated Measures?
OR
What is a concern in Within Subject/Related Samples/ Repeated Measures?
Order or carry-over effects,
e.g., Participants perform a task better in later conditions because they have had a chance to practice it.
What is the most common group design in Experimental designs?
Mixed (Between +Within Subjects)
What are the characteristics of Mixed group design?
Here is an example of Comparing hearing aid 1 vs 2 (Between Within and Mixed)
Between
N = 20 in 2 groups; n = 10
Grp 1 = HA-1; Grp 2 HA-2
IV: type of aid; DV: speech perception score
Within
N = 20; n = 20
Each participant wears HA-1 1 wk, HA-2 1 wk
IV: type of aid; DV: speech perception score
To control order effect, better if ½ do HA-1 1st & ½ do HA-2 1st
Mixed
10 mild HL, 10 moderate HL, 10 severe HL – N = 30; n = 10
Each participant wears HA-1 1 wk, HA-2 1 wk
IV between: hearing level; IV within: type of aid; DV: speech perception score
To control order effect, better if ½ do HA-1 1st & ½ do HA-2 1st in each group
Here is an example of Comparing hearing aid 1 vs 2 (Between Within and Mixed)
Between
N = 20 in 2 groups; n = 10
Grp 1 = HA-1; Grp 2 HA-2
IV: type of aid; DV: speech perception score
Within
N = 20; n = 20
Each participant wears HA-1 1 wk, HA-2 1 wk
IV: type of aid; DV: speech perception score
To control order effect, better if ½ do HA-1 1st & ½ do HA-2 1st
Mixed
10 mild HL, 10 moderate HL, 10 severe HL – N = 30; n = 10
Each participant wears HA-1 1 wk, HA-2 1 wk
IV between: hearing level; IV within: type of aid; DV: speech perception score
To control order effect, better if ½ do HA-1 1st & ½ do HA-2 1st in each group
What is the difference between longitudinal and cross-sectional?
Longitudinal: observational research technique involves studying the same group of individuals over an extended period. Variables that are not related to various background variables
Cross- Sectional: Type of research design in which you collect data from many different individuals at a single point in time. In cross-sectional research, you observe variables without influencing them
What is the difference between a Prospective and Retrospective study design?
Prospective: individuals are followed over time and data about them is collected as their characteristics or circumstances change
Retrospective: Individuals are sampled and information is collected about their past
Explain Degrees of Freedom:
When computing any statistical test, Degrees of Freedom (df) need to be determine, the size and number of groups being compared
The number of independent pieces of information used to calculate a statistic.
the extent to which components in a design are free to vary
What are parametric statistics? (5)
If you violate too many parametric statistics you should use:
Nonparametric
With which type of data do you often see parametric analyses?
Often see parametric analyses used with ordinal data – e.g., from rating scale
Why are df necessary?
Necessary to determine critical value for test statistic to reach alpha level (i.e., p value associated with statistic).