I am using glmnet to predict probabilities based on a set of 5 features using the following code. I need the actual formula because I need to use it in a different (non R) program.
deg = 3 glmnet.fit <- cv.glmnet(poly(train.matrix,degree=deg),train.result,alpha=0.05,family='binomial')
The names of the resulting coefficients have five positions (I assume this is one of each feature) and each one of them is a number between 0 and 3 (I assume this is the degree of the polynomial). But I am still confused about how exactly to reconstruct the formula.
Take these for example:
> coef(glmnet.fit,s= best.lambda) (Intercept) -2.25e-01 ... 0.1.0.0.1 3.72e+02 184.108.40.206.1 9.22e+04 0.2.0.0.1 6.17e+02 ...
Let's call the features A,B,C,D,E. Is this how the formula should be interpreted?
Y = -2.25e-01 + ... (3.72e+02 * (B * E) + (9.22e+04 * (A * B * E) + (6.17e+02 * (B^2 + E) ...
If that is not correct how should I interpret it?
I saw the following question and answer but it didn't address these types of coefficient names.
Thanks in advance for your help.