# Estimating Probabilities in R

I am trying to analyze some probability data with R. The data I have gives the frequency of certain outcomes (A and B) for a given probability p and what I want is a model that will allow me to estimate p from only the frequency data.

Right now I am just running a linear regression (something like `lm(p ~ A + B)`) which works more or less but I know that this is not the "right way" to do it. In particular, my current model will, for some values of A or B, return values that do not lie within the interval `[0, 1]`, i.e. that are not valid for a probability.

I am pretty sure there is a way to do this, but I can't for the life of me figure out what the model was called or how to run it in R. Can anybody give me a hint?

-
It's not clear what you mean by "frequency of certain outcomes (A and B) for a given probability p" -- can you clarify or give a sample data set? –  Prasad Chalasani Dec 25 '10 at 16:59

You cannot just run `lm(p ~ A + B)` as there is no model relating your count variables A and B with the probabilities: `lm()` fits a linear regression to model an unbounded real variable as a function of a linear combination of real variables (where you can substitute count variables).

The easiest model for probabilities is a logistic regresion which uses a logistic function to make from unbounded real values to the bounded interval [0,1]. You can fit logistic regression in R using `glm()` as well as a number of add-on packages for special cases, see e.g. this rseek.org search for logistic regression.

Also, CrossValidated is a good site for modeling questions such as this.

-
Perfect, that was what I was looking for. Thank you very much! –  Nils Dec 25 '10 at 17:23