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Explore the differences between true experiments and quasi-experiments in research methodologies. Understand the characteristics, threats to validity controlled by experiments, and obstacles faced in the field. Learn about various threats, such as history, maturation, testing, and instrumentation, that can influence the outcomes of experiments. Discover the importance of controlling variables and maintaining validity in research studies.
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Quasi-Experiments – Outline • True Experiments • Characteristics • Threats to validity controlled by experiments • Threats not controlled by experiments • Obstacles to true experiments in the field • Quasi-experiments • The logic of quasi-experiments • Non-equivalent control group design • Example – Langer & Rudin (1976) • Interrupted time-series design • Example – Campbell (1969) Quasi
True Experiments - Characteristics • True experiments are characterized by: • A manipulation • A high degree of control • An appropriate comparison (the major goal of exerting control) • Manipulation in the presence of control gives you an appropriate comparison. Quasi
Threats to validity controlled by true experiments • History • occurrence of an event other than the treatment Quasi
Threats to validity controlled by true experiments • History • Maturation • participants always change as a function of time. Is change in behavior due to something else? Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • improvement due to practice on a test (familiarity with procedure, or with testers expectations) Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • Instrumentation • especially if humans are used to assess behavior (fatigue, practice) Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • Instrumentation • Regression • when first observation is extreme, next one is likely to be closer to the mean. Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • Instrumentation • Regression • Selection • if differences between groups exist from the outset of a study Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • Instrumentation • Regression • Selection • Mortality • if exit from a study is not random, groups may end up very different Quasi
Threats to validity controlled by true experiments • History • Maturation • Testing • Instrumentation • Regression • Selection • Mortality • Interactions of selection… • with History • with Maturation • with Instrumentation (ceiling effects) Quasi
Note difference between these threats: • Maturation • One group; performance better on post-test than on pre-test • Interaction of Maturation & Selection • Two or more groups • Performance difference larger on post-test than on pre-test Quasi
Threats to validity not controlled by experiments • Contamination • communication of information about the experiment between groups of subjects • Cook & Campbell (1979): • resentment • ‘compensatory rivalry’ • diffusion of treatment: control subjects use information given to others to change their own behavior. Quasi
Contamination – an example • Craven, Marsh, Debus, & Jayasinghe (2001) • Journal of Educational Psychology • Teachers trained to improve students’ academic self-concept through praise • Internal control • External control Quasi
Contamination – an example • Craven, Marsh, Debus, & Jayasinghe (2001) • Next slide shows T2 (post-test) academic self-concept scores as a function of T1 scores for control children only. Quasi
1.0 0.5 0.0 -0.5 -1.0 Low Medium High T1 acad self concept External control Internal control Internal high focus Internal low focus T2 acad self concept No diffusion Resentful demoralization? Overzealous cooperation? Low focus group consistently higher than external control Diffusion
Threats to validity not controlled by experiments • Contamination • Threats to external validity • best way to deal with this is replication Quasi
Threats to validity not controlled by experiments • Contamination • Threats to external validity • Hawthorne effects • changes in a person’s behavior due to being studied rather than the manipulation. • a special kind of reactivity. Quasi
Hawthorne effects • Demand characteristics • cues communicated by researcher • subject’s under-standing of their role Quasi
Hawthorne effects • Role of “research subject” • Is subject behaving the way he thinks a person in that role should behave? • (E.g., hypnotized person) Quasi
Hawthorne effects • Orne (1962) • ‘good subjects’ think they are contributing to science by complying with researcher’s demands Quasi
Hawthorne effects • What to do about Hawthorne effects? • Orne (1962): Use quasi-control subjects as “co-investigators” • They do your task, reflect on demand characteristics of the experiment. Quasi
Obstacles to true experiments in the field • Sometimes, we cannot bring the phenomenon we want to study into the lab, so we have to work in the field. • Can we do experiments in the field? Quasi
Obstacles to true experiments in the field • Can’t get permission from individuals in authority? • Your study may involve some time and effort on their part. But what’s in it for them? • In schools, parents also have to agree. Quasi
Obstacles to true experiments in the field • Can’t get permission from individuals in authority? • Can’t assign subjects to groups randomly? • have to work with intact groups (e.g., classes in a school) Quasi
Quasi-Experiments • Quasi-experiments resemble true experiments… • usually include a manipulation, and provide a comparison. • …but they are not true experiments. • lack high degree of control that is characteristic of true experiments. Quasi
Quasi-Experiments • Quasi-Experiments are compromises • They allow the researcher some control when full control is not possible. Quasi
Quasi-Experiments • Because full control is not possible, there may be several “rival hypotheses” competing as accounts of any change in behavior observed. • How do we convince others that our hypothesis is the right one? Quasi
The Logic of Quasi-Experiments • Eliminate any threats you can • Show how each threat to validity on list given above is dealt with in your study. • Argue that others don’t apply. • using evidence or logic Quasi
Two kinds of quasi-experiments • Non-equivalent control group • “non-equivalent” because not randomly assigned Quasi
Two kinds of quasi-experiments • Non-equivalent control group • Interrupted time-series design • a series of observations over time, interrupted by some treatment Quasi
Non-equivalent Control Group design • Control group is “like” the treatment group. • Chosen from same population • Pre- and post-test measures obtained for both groups, so similarity can be assessed. Quasi
Non-equivalent Control Group design • Control group is not equivalent • subjects are not randomly-assigned to control & treatment groups • so best you can do is argue that comparison is appropriate. Quasi
Non-equivalent Control Group design • If the groups are comparable to begin with, this design potentially eliminates threats to internal validity due to: • History • Maturation • Testing • Instrumentation • Regression Quasi
Problems with the NECG design • Threats to validity due to interactionswith selection may not be eliminated using the NECG design. • Selection and maturation • Most likely when treatment group is self-selected (as in psychotherapy cases – people who sought help). Quasi
Problems with the NECG design • Selection and maturation • Selection and history • Does one group experience some event that has a positive or negative effect (e.g., teacher of one class leaves)? Quasi
Problems with the NECG design • Selection and maturation • Selection and history • Selection and instrumentation • Does one group show ceiling or floor effects? Quasi
Problems with the NECG design • Selection and maturation • Selection and history • Selection and instrumentation • Regression to the mean • Are one group’s pretest scores more extreme than the other group’s? Quasi
Posttest Pretest Control group Possible NECG study outcomes • both experimental and control groups show improve-ment from pretest to posttest • appears not to be any effect of the treatment Quasi
Pretest Posttest Control group Possible NECG study outcomes • Looks like a treatment effect, but there may be a threat due to • selection and maturation, • selection and history Quasi
Pretest Posttest Control group Possible NECG study outcomes • Selection and maturation could be a threat • Or interaction of selection and • history • testing • instrumentation • or mortality. Quasi
Pretest Posttest Possible NECG study outcomes • Interaction of selection and regression looks like a serious threat here • Selection and maturation probably not a threat here. Quasi
Pretest Posttest Possible NECG study outcomes • Crossover effect • Clearest evidence for an effect of the program of any of these graphs. • Selection and instrumentation not a problem – no ceiling or floor effects Quasi
Quasi-experiment example • Langer & Rudin (1976) • Research conducted in retirement home. • Residents on one floor given more control over their daily lives • Residents of another floor given same interaction with staff, but no increased control. Quasi
Langer & Rudin (1976) – Measures • Ratings • Self-report of feeling of control from residents • Staff assessments of mental & physical well-being, by ‘blind’ assessors • Objective measures • record of movie attendance • participation in “Guess how many jelly-beans” contest on each floor Quasi
L & R (1976) – limits on control • L & R had no control over • who entered the home • who was assigned to either floor. • no control over staff hiring or firing / resigning. Quasi
L & R (1976) – Possible Problems • Interaction of Selection and Maturation • even if groups have similar pretest scores, they may differ on things pretest didn’t measure • probably not a problem here – people on both floors had similar SES • assigned to floors randomly, not by health status. Quasi
L & R (1976) – Possible Problems • Selection and history • suppose a popular (or unpopular) nurse left one of the floors during the study. That might influence well-being. • L & R did not address this issue. Quasi
L & R (1976) – Possible Problems • Selection and history • Selection and instrumentation • did one group show ceiling or floor effects? • L & R say, no. Quasi
L & R (1976) – Possible Problems • Selection and history • Selection and instrumentation • Regression • were one group’s pretest scores more extreme than the others? • L & R say, no. Quasi
L & R (1976) – Possible Problems • Selection and history • Selection and instrumentation • Regression • Observer bias and Contamination • observers in the L & R study were not aware of the hypothesis. • L & R reported there was little communication between floors. Quasi