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Published byDina Chambers Modified over 8 years ago
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What to Measure Sampling and generalizability Population vs. sample Sampling techniques – procedures for deciding which examples of the population you will measure Generalization and representative To generalize from sample to population, need to know if sample is representative of the population
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What to Measure, con’t Types of samples Non-probability sampling Haphazard or convenience sampling Self-selected sample Quota sampling Probability sampling Sometimes called random sampling Simple random sampling Systematic sampling Stratified sampling Cluster sampling
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What to Measure, con’t Sample size Probability sampling might not be representative if the sample size is not large enough How large is large enough?
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Goals of Experimental Research Causation What is causation? To show causation, you must have three things: Effect did not come before cause Change in 1 st thing related to change in 2 nd thing Can be shown by a correlation Nothing else could have caused change in 2 nd thing Cannot be shown by a correlation Eliminate rival hypotheses
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Goals of Experimental Research Experimental overview 1 st stage Sampling 2 nd stage Divide samples into groups 3 rd stage Manipulate groups according to experimental design 4 th stage Measure results in each group
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Type of variables Independent variables Two different groups Control group Experimental group Dependent variables Extraneous variables Subject variables Experimenter variables Situational variables Confounding variables
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Complex Experimental Designs Three or more groups Factorial designs Main effects Interaction effects Multivariate designs
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Developmental Designs Longitudinal designs Test the same sample at least twice across some time period When does repeated tested become longitudinal? Problems with longitudinal designs Test obsolescence Issues related to sampling Cohort effects Subject attrition Repeated psychological testing Advantages of longitudinal designs Sampling: Age diffs vs. age changes Examine any cross-age pattern Trace transformations underlying behavior
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Developmental Designs Cross-sectional designs Test different people at different ages Tests age changes as opposed to age differences Problems with cross-sectional designs Selection bias Subject attrition Confounding of age and generation of cohort Measurement equivalence
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