# Interpreting coefficient names in glmnet in R

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
1.1.0.0.1    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.

-

Usually, we use the predict function. In your case, you need the coefficients to use in another program. We can check the agreement between using predict and the result of multiplying the data by the coefficients.

``````# example data

library(ElemStatLearn)
library(glmnet)
data(prostate)

# training data

data.train <- prostate[prostate\$train,]
y <- data.train\$lpsa

# isolate predictors

data.train <- as.matrix(data.train[,-c(9,10)])

# test data

data.test <- prostate[!prostate\$train,]
data.test <-  as.matrix(data.test[,-c(9,10)])

# fit training model

myglmnet =cv.glmnet(data.train,y)

# predictions by using predict function

yhat_enet <- predict(myglmnet,newx=data.test, s="lambda.min")

#  get predictions by using coefficients

beta  <- as.vector( t(coef(myglmnet,s="lambda.min")))

# Coefficients are returned on the scale of the original data.
# note we need to add column  of 1s for intercept

testX <- cbind(1,data.test)
yhat2  <- testX %*% beta

# check by plotting predictions

plot(yhat2,yhat_enet)
``````

So each coefficient corresponds to a column in your training data. The first one corresponds to the intercept. In sum, you can extract the coefficients and multiply by the test data to obtain the outcomes you are interested in.

-
Thanks for your response. Unfortunately, I am still not sure how to convert those coefficient names and values into a formula. "So each coefficient corresponds to a column in your training data". That can't be true. I have ~80 non-zero coefficients. But I only have 5 columns of training data. I think each one of those period-separated numbers probably corresponds to a one of my columns. Any second opinions? –  dougp Jun 21 '12 at 18:50
Check out the columns of: polyData <- poly(train.matrix,degree=deg). poly is expanding your training data (from 5 cols to ~80) with orthogonal polynomials. Is that what you are seeking? You'll see that there are new columns/names and these match the coefficients. –  julieth Jun 21 '12 at 23:31
I see. That helps a lot. Thank you. I tried this once without "poly" and once with degree = 1 and things were more clear. As I look into this more it appears that my general reconstruction of the formula is correct except for one thing. I think that the features A,B,C,D,E are actually orthogonal polynomials (not the raw data). –  dougp Jun 22 '12 at 15:39