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Multivariate Methods Pattern Recognition and Hypothesis Testing
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Goals in Multivariate Analysis Model building – predicting metric variable from others Predicting dichotomies and counts – generalized linear model Testing/predicting groups Reducing the number of dimensions Exploring count data
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Goals, cont Distances between items, individuals, and assemblages Grouping cases - classification
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Model Building Multiple Regression Single response variable and multiple explanatory variables Search for a parsimonious, meaningful model
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Generalized Linear Model A generalization of the linear model uses a link function to connect the linear model and the response Logistic regression for predicting dichotomous data Poisson regression to predict counts
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Testing Groups Discriminant Functions –Confirming groups defined on independent grounds –Matching new observations to existing groups –Applications – compositional analysis, sex determination, ethnicity –Problems – normal distributions assumed, sample size requirements
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Reducing Dimensionality Principal Components –Many correlated variables –Observed variables approximate what we want to study – grouping variables –Applications - assemblage data, measurement data on artifacts –Problems – evaluating significance of results and interpretation
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Patterns in Count Data Correspondence analysis –Examining variables and cases simultaneously –Applications – assemblage comparisons (sites, areas within sites, features) –Problems – Interpretation of the results
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Measuring Distance Multidimensional scaling –Variables converted to distances between cases –Applications – measurements –Problems - Interpretation
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Classification (Grouping) Cluster Analysis –Finding clusters in multi-dimensional space – grouping cases –Applications – assemblages, artifacts, features –Problems – “real” vs. created clusters, number of clusters
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