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Ex Post Facto Experiment Design. Ahmad Alnafoosi CSC 426 Week 6 . Ex Post Facto what???. Webster Dictionary defines Ex Post Facto as: after the fact : retroactively Late Latin, literally, from a thing done afterward. First Known Use: 1621. Explain More…. - PowerPoint PPT Presentation
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Ex Post Facto Experiment Design
Ahmad AlnafoosiCSC 426 Week 6
Ex Post Facto what???
• Webster Dictionary defines Ex Post Facto as:• after the fact : retroactively• Late Latin, literally, from a thing done
afterward. First Known Use: 1621
Explain More…
• In situations where it is not possible to manipulate variables.
• Ex Post Facto design provides an alternative to investigate how independent variables affect dependant variables.
• The researcher can observe the independent variables after the event.
That sounds like Co-relational design?
• Co-relational design and Ex post facto design involve examining existing conditions.
• Ex Post Facto design has dependant and independent variables whereas Co-relational design does not.
What about experimental Design?
• Both experimental design and Ex post facto design have independent and dependant variables.
• Ex Post Facto differs that it does not introduce the presumed producing cause.
• Thus in Ex Post Facto the researcher is NOT able to draw firm cause and effect.
• Both share similar designs.
What does Ex Post Facto Design Look like
• Similar to Experimental design, ex post facto design has multiple forms.
• These form involve variation of events (experience), Observations, Groups and combination of the above.
Simple Ex Post Facto Design
Simple Ex Post Facto Design• Similar to Static Group
Comparison with the difference of the timing of the treatment (Experience).
• It is called Experience since the researcher can not control it.
• Association can be drawn from this study (NOT Cause and effect).
Factorial Design
• In designs that involve multiple dependant variables with Ex Post Facto design, Factorial design is needed.
Randomized Two Factor Design• 2 variables tested by 4
groups. • Variable 1 effect can be
studied by comparing group1 and group2 of that of group3 and group4.
• Variable 2 effect can be studied by comparing group 1 and group 3 of that of group 2 and group4
Randomized Two Factor Design - Cont
• This design is a generalized version of Solomon four group design. (event instead of experiment)
• This design allow to see the effect of each of the variables.
• It also can show the interaction effect of the variables.
Combined Experimental and Ex Post Facto Design
• Combining experiment with Ex Post Facto Experience
• It has Ex Post Facto component by initially selecting groups that have that experience.
• Then there is experimental phase where where experiment is conducted.
Combined Experimental and Ex Post Facto Design - Cont
• The results will be 4 groups all possible combinations of experience and experiment.
• This design enables the study of experiment effect the dependant variables
• Also it enables the study of how previous experience interact with the experiment.
Sampling
Ahmad AlnafoosiCSC 426 Week 6
Choosing a Sample in Descriptive Study
• The purpose of descriptive study is to be able to determine and describe large population.
• In most instances surveying all the population is not possible because of the sheer size.
• On the other hand the sample needs to be large enough to be representative of the population and their characterizations that are relevant to the study.
Sampling Design
• To achieve the aforementioned goals a sampling design is needed.
• The sampling design needs to take into consideration the actual traits of the population to apply the appropriate sampling design.
Probability Sampling
• Researcher can specify that each segment of the population will be represented in the sample.
• The sample is chosen using Random Selection (each member of the population has equal chance to be picked)
Simple Random Sampling
• Is a probability sampling design.• Each member has equal chance to be
picked.• Used for small population where every
member is know.
Stratified Random Sampling
• Is a probability Sampling design.• Is used in stratified population where there
is multiple layers strata • Guarantee that each of the identified strata.• Is used when the stratum are equal in size.
Proportional Stratified Sampling
• is probability sampling design.• When the population is stratified but where
stratum are not equal in size.• In this case the number of random sample
of each strata taken is dependant proportionally to the strata population to the whole population.
Cluster Sample
• is probability sampling design.• Is used when the population is spread over
large area. • Clusters need to be similar to each other as
much as possible.• Each cluster has to have equal
heterogeneous population.
Systematic Sampling
• Is probability sampling design.• Involve selecting individuals based on pre-
determined sequence.• The sequence needs to be random.
Factors in determining Probability Sample Design
• Population size• Stratification • Size of stratum• Clustering
Non-Probability Sampling
• Does not guarantee that each element of the population will be represented in the sample.
• Some members of the population have no chance of being represented.
Convenience Sampling
• Is non probability sampling design.• AKA Accidental sampling.• It sample available members of the
population.
Quota Sampling
• Is Non-probability Sampling• It select individuals in the same proportion
as they are found in the general population, but it is not random.
Purposive Sampling
• Is Non-probability Sampling• It select individuals for a particular purpose.• Needs to be careful since it assume that the
chosen sample is useful for the purpose.
Sampling Surveys of very large population
• To tackle very large population multi-staging of sampling areas might be needed.
• This involves• Primary area selection• Sample location selection• Chunk selection• Segment selection• Housing selection
What is the right sample size
• For population less than 100, sample the entire population.
• For population around 500, sample 50%• For population around 1,500 , sample 20%• For population larger than 5,000 sample
size can be around 400.
Sample Bias
• Sampling will introduce bias into the sample.
• Researcher need to acknowledge.