I'm working on a project that would show the potential influence a group of events have on an outcome. I'm using the glmnet() package, specifically using the Poisson feature. Here's my code:

```
# de <- data imported from sql connection
x <- model.matrix(~.,data = de[,2:7])
y <- (de[,1])
reg <- cv.glmnet(x,y, family = "poisson", alpha = 1)
reg1 <- glmnet(x,y, family = "poisson", alpha = 1)
**Co <- coef(?reg or reg1?,s=???)**
summ <- summary(Co)
c <- data.frame(Name= rownames(Co)[summ$i],
Lambda= summ$x)
c2 <- c[with(c, order(-Lambda)), ]
```

The beginning imports a large amount of data from my database in SQL. I then put it in matrix format and separate the response from the predictors.

This is where I'm confused: I can't figure out exactly what the difference is between the glmnet() function and the cv.glmnet() function. I realize that the cv.glmnet() function is a k-fold cross-validation of glmnet(), but what exactly does that mean in practical terms? They provide the same value for lambda, but I want to make sure I'm not missing something important about the difference between the two.

I'm also unclear as to why it runs fine when I specify alpha=1 (supposedly the default), but not if I leave it out?

Thanks in advance!

`plot(reg)`

.Never rely on glmnet's default lambda sequence!Notorious issue. Always provide your own sequence. Then get the optimal lambda value afterwards from`fit$lambda.min`

and use it with the`s=lambda.min`

parameter in all calls to`predict()`

,`coef()`

etc.4more comments