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Types of Research and Designs. This week and next week… Covering Research classifications Variables Steps in Experimental Research Validity Research Designs Common Sources of Error. VALIDITY. VALIDITY. In Step 4, the validity of measurement for the DVs comes into question
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Types of Research and Designs • This week and next week… • Covering • Research classifications • Variables • Steps in Experimental Research • Validity • Research Designs • Common Sources of Error
VALIDITY • In Step 4, the validity of measurement for the DVs comes into question • There are two (2) important classification of validity in experimental research: • Internal validity • External validity
Internal Validity • How valid the findings are within, or internal to, the study. • Did the treatments cause the outcome to occur, or did other extraneous factors cause the outcome?
Internal Validity • Eight (8) factors that threat the internal validity of a study: • History • Maturation • Testing • Instrumentation • Statistical regression • Selection • Experimental mortality • Interaction of Selection and Maturation or History
History • Specific things that happen while conducting the research study that affect the final scores of the participants in addition to the effect of the experimental treatment. • The effects of linear vs. nonlinear periodization models for in-season volleyball players • Resistance training vs. aerobic training for physical fitness in middle-aged men.
Maturation • Subjects grow older during the course of an experiment – this may affect the outcome of the study • The time-course for training-induced increases in strength for adolescents during a 25-week resistance training program • The effects of 12 weeks of aerobic training on VO2max (from September to December)
Testing • The “learning” effect • Subjects get better at scoring well on a test the more times they take it. • The effects of 2 days of resistance training on muscle strength and power output.
Instrumentation • Changes in the adjustment or calibration of the measuring equipment or use of different standards among scorers may cause a difference in outcome scores.
Statistical Regression • The tendency for groups with extremely high or low scores on one measure to score closer to the mean score of the population on a second measure. • Can be mistaken for a treatment effect • Example: Low-IQ and high-IQ groups are formed. A treatment is applied to both groups for twelve weeks. A physical ability test is administered to both groups. It is found that both groups are equal in physical ability.
Selection • The selection of subjects and their assignments to groups can bias the outcome of a study. • Subjects that are not representative of the population • Kinesiology majors vs. all college-aged males and females • Groups that are not equal in their abilities prior to the experiment • VO2max and muscle strength
Experimental Mortality • Subject attrition • Excessive loss of subjects throughout the course of a study • Sample of subjects is no longer representative of the population
Interaction of Selection and Maturation or History • The maturation effect or history effect is not the same for all groups selected for the research study – may affect the outcome. • Groups that differ in age or background may respond differently to the same treatment • If a group starts out unequal in ability due to maturation or history, they may not all have the same potential for improvement or change. • Disproportional experimental mortality
External Validity • The degree to which findings in a research study can be inferred or generalized to other populations, settings, or experimental treatments. • Can the findings of a particular study be inferred to the entire population? • Are the findings unique to the participants of the study, or do they apply to other groups? • Examples: A study using prison inmates. Good internal validity.
External Validity • Four threats to external validity • Interaction effect of testing • Interaction effects of selection bias and experimental treatment • Reactive effects of experimental setting • Multiple-treatment interference
Interaction Effect of Testing • This effect occurs when the pre-test itself changes the group’s response to the treatment. • Example: A pre-test may identify deficiencies that the subject may try to correct during the course of the treatement
Interaction Effects of Selection Bias and Experimental Treatment • The participant or groups selected in a biased manner respond to the experimental treatment in a unique way so they are not representative of any population. • Novice vs. intermediate vs. elite weight lifters • This threat generally occurs as a result of a convenient group is tested and an attempt is made at generalizing the results
Reactive Effects of Experimental Settings • The experimental setting is not the same as a subject’s ambient environment – this may affect the study outcome. • Subjects may respond differently around investigators • Laboratory vs. natural settings • Subjects may think that a particular treatment is supposed to do “something” and respond like they are “supposed to.”
Multiple-Treatment Interference • Multiple treatments administered at the same time on the same group of subjects. • Subject involved in two studies at the same time • Competing influences of treatments
Control of Variables • Control of all variables operating in an experimental study is highly desirable, but seldom (if ever) accomplished. • Sleep, food, exercise, etc. • Too much control can harm external validity • Not enough control can harm internal validity
Validity in Summary • In many cases, internal and external validity cannot be obtained. • Must decide which is most important • Good internal validity is necessary for external validity • Internal validity is the basic minimum (LCD) for an experimental design • Investigators must consider the threats to validity when designing research studies.