Logistic Regression Model edit

Model edit

 

i is the index for each individual observation, or in the other form.

 

Estimation edit

To estimate the parameter  , we maximize the likelihood function:

 

where,   are binary dependent variables, and this maximization procedure is done by numerical method such as Newton Raphson.

Odds Ratio edit

Let's set up a simple case: logistic model with one factorial factor ( level, which can be more level):

 
 

and the Odds Ratio of level-i over the base line level is

  

The confidence interval of OR is the exponential of confidence interval of  .

In more than one factor case, this is this still the same, conditioning on other factors remain fixed at certain level.

Mix Effect Model edit

To decide a variable to be fix effect or random effect, explanation involve expression in R package lme4 and lattice:

Fix Effect edit

1. continuous variable, there is a observable linear/nonlinear trend/correlation in response;

2. for categorical variable(factor), the level is limited (2 or 3), fixed (not a sample from a larger population), and/or its effect at each level is of major interests.

Random Effect edit

When a factor have multiple levels and is of less interest to know the effect of each specific level.

1. (1|Factor1): This would give you a random effect, graphical detection should be xyplot(y~x,data), with no systematical trend but oscillation a among different levels;

2. (0+Factor2|Factor1): This would give you random interaction, where Factor1 is random, Factor2 is fixed, graphical detection should be xyplot(y~factor2,groups=factor1,data), and there is observable oscillation for each level Factor2 within Factor1, and the trend is not parallel in groups;

3. (0+Covariate1|Factor1): This would count as random slope, graphical detection is xyplot(y~covariate1|Factor,data,type=c('p','a')), and see the slope at each level of Factor1 is different;

We would also have some doubts about if 1. 2. 3. are correlated, so use model (1+Factor2+Covariate1|Factor1) or smaller model to compare with nested model (using anova).

Data Transformation edit

How to transform data into more normal likely pattern

One Heavy Tail Data edit

Two Heavy Tail Data edit

Bimodal Data edit