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G89.2247 Class 11 Statistical Methods for the Analysis of Change Administrative Issues Why study change? Overview of methodological issues Overview of statistical issues and methods
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G89.2247 Class 12 Administrative Issues Review of syllabus Final Project Weekly assignments Weekly lab session Grades (40% homework, 20% presentation, 40% paper)
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G89.2247 Class 13 Why study change? Description of phenomena in time –Trajectories How do children learn words? –Cycles Stress patterns over a week –Historical record Numbers of shelter requests over days Forecasting and Prediction –Social planning Interventions for college drinking –Financial planning and investment Value of blue chips over holiday period
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G89.2247 Class 14 Why study change?(Continued) Modeling social and behavioral processes –Behavioral phenomena are located in time –Relations among multiple variables are often dynamic –Systems view of behavior Making inferences about causality –Causal relations are temporal –Baseline allows efficient inference in experiments Baseline measure as covariate –Adjusting for selection in observational studies Holding constant initial value before causal factor
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G89.2247 Class 15 Some examples of change studies Stress and coping example Other NYU Studies –Adolph, Bates, Fuligni, Hughes, Ruble, Seidman, Shinn, Yoshikowa
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G89.2247 Class 16 Overview of methodological issues History suggests that studying change is difficult –Cronbach and Furby (1970) How should we measure change – or should we? Problems are often associated with panel designs –Measurements taken 2 or 3 times –Y 1, Y 2, and Y 3 –Spacing often set arbitrarily (month, year)
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G89.2247 Class 17 Problems that have been noted –Difference scores D=Y 2 – Y 1 –Advantages Easy to compute Easy to interpret –Problems Spacing of observations may not match effect Missing values: missing either time makes D missing D is usually correlated (negatively) with starting point D is doubly affected by unreliability
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G89.2247 Class 18 Reliability of Difference Scores Suppose Y 1 = T + e 1, and Y 2 = T + + e 2. –T is the stable "true" score of the subject at time 1 – is the "true" change from time 1 to time 2 –e 1 and e 2 are random error terms D = + e 2 - e 1 While Var(Y 2 ) = V(T) + V( ) + V(e 2 ) Var(D = V( ) + V(e 2 ) + V(e 1 )
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G89.2247 Class 19 Review of problems –Regression methods Y 2 = b 0 + b 1 Y 1 + b 2 X + e Issues –Spacing of observations –Missing values –Regression artifacts (Reliability of Y 1 ) –Trajectory methods Issues –Specification of trajectory form –Missing values
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G89.2247 Class 110 Overview of methodological issues Other issues –Trade off within subject n and between subject n –Effects of taking repeated measurements –Thinking about variation Interindividual differences in level Interindividual differences in trajectory Intraindividual changes that are systematic Intraindividual changes that are error
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G89.2247 Class 111 Overview of statistical issues Non-independence of observations over subjects –Y 1, Y 2, Y 3, Y 4 for John are likely to be more similar than Y 1, Y 2, Y 3, Y 4 for Mary Non-independence of observations in the temporal sequence –Y 1 & Y 2 will be more similar to each other than either is to Y 4 Traditional statistical methods assume independence
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G89.2247 Class 112 Overview of statistical issues Categorical, ordinal, continuous vs normal response variables –Many psychological variables are made up of individual counts Did I have a headache today? Did Jerry answer the first question correctly –Statistical models for counts, and for dependence among variables are quite different than those for normally distributed process variables.
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G89.2247 Class 113 Overview of statistical issues Missing data –Can observations over time be imputed or modeled? –Can patterns of dependence be used in imputation? –How is varying amount of information taken into account in statistical tests?
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G89.2247 Class 114 Overview of Methods to be discussed ANOVA, MANOVA and difference score analysis Regression based panel analyses Structural equation methods Random regression methods Latent growth curve models Generalized linear models Some special methods for binary outcomes Simple survival analysis
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G89.2247 Class 115 Missing in our discussion Time series analyses (Box and Jenkins, ARIMA methods) Markov transition models
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