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Choosing among regression-like techniques

This is very much under construction. Just trying to lay out in table form a little bit about each of various regression-like procedures.

 

Method Objective Description Dependent var Independent var(s) Comments
std multiple regression Predict values of Y given values of X Linear model

Y = b0+b1X1+b2X2 ...

Interval Interval or binary Significance tests require normality of population vars
std
Logistic Regression
predict the presence or absence of a characteristic or outcome based on values of a set of predictor variables. similar to a linear regression model but i where the dependent variable is dichotomous

Models the log of the odds that Y=1 given value of X's

logit(p) = ln(p/(1-p)) = b0+b1X1+b2X2

the p's are unknown

Binary Interval or binary

Many stats programs will all categorical indep var, which is internally converted to dummies

The effect of X1 on the odds that Y=1 is given by exp(b1)=e^b1
Multinomial logistic regression classify subjects based on values of a set of predictor variables. This type of regression is similar to logistic regression, but it is more general because the dependent variable is not restricted to two categories

f model the odds that case i has Y=j rather than Y=k

log(πij/πik) = b0 + b1X1 + b2X2 ...

 

 

Categorical Continuous or binary

Many stats programs will all categorical indep var, which is internally converted to dummies

Same goals and data requirements as discriminant analysis, an older, less favored technique
Discriminant analysis   Y is a categorical variable. We use b0+b1X1+b2X2 to guess which category a case belongs to Categorical, including binary Interval or binary Uncool version of multinomial logistic regression
Poisson regression The dependent variable is freq of cases in a cell of a crosstab (contingency table), and the explanatory variables are factors and covariates.   Categorical ("factors") and continuous ("covariates"    
 

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