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Quantitative Methods What lies beyond?
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General Linear Model What lies beyond? What does GLM do for us?
partitioning of variance and DF tests for whether x-variables matter statistical elimination best-fit equation showing how x-variables matter What is general about GLM? categorical or continuous x-variables main effects and interactions any number of x-variables and interactions
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General Linear Model What lies beyond? How is GLM not general?
linearity/additivity Normality homogeneity of variance independence a single y-variable
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Generalised Linear Model
What lies beyond? Generalised Linear Model The Generalised Linear Model relaxes linearity/additivity Normality homogeneity of variance independence a single y-variable
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Generalised Linear Model
What lies beyond? Generalised Linear Model The Generalised Linear Model adds link function variance function choice for estimating or setting the ‘scale factor’
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Generalised Linear Model
What lies beyond? Generalised Linear Model The Generalised Linear Model includes: Link function Variance Function Name of model Identity Normal GLM Logit Binomial Logistic Regression Log Poisson Log-linear models Inverse Exponential Survival analyses
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General Linear Model What lies beyond? How is GLM not general?
linearity/additivity Normality homogeneity of variance independence a single y-variable
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Generalised Linear Model
What lies beyond? Generalised Linear Model What does Generalised Linear Model do for us? partitioning of deviance and DF tests for whether x-variables matter statistical elimination best-fit equation showing how x-variables matter What is general about Generalised Linear Model? categorical or continuous x-variables main effects and interactions any number of x-variables and interactions
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General Linear Model What lies beyond? How is GLM not general?
linearity/additivity Normality homogeneity of variance independence a single y-variable
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General Linear Model What lies beyond? How is GLM not general?
linearity/additivity Normality homogeneity of variance independence a single y-variable
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Multivariate methods What lies beyond? Principle components analysis
Factor analysis Discriminant analysis MANOVA Cluster analysis / Numerical taxonomy
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10. 2 (principles of marginality), 10
10.2 (principles of marginality), 10.4 (applications of marginality), 11.1 (calculate R2 or R2adj), 5.3 (orthogonality)
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9 (assumptions and model criticism)
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9 (assumptions and model criticism)
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4 (statistical elimination)
10.2 (marginality and types of SS) and 10.4 (examples)
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4 (statistical elimination, legs example)
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Last last words… What lies beyond?
Learn GLMs for the Biology course and finals Be prepared to learn Generalised Linear Models for more advanced problems A chance to do an exam question in the practicals
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