I performed lasso and then leave-one-out cross validation
cv<-cv.glmnet(df, df$Price, nfolds = 1500)
When I plot cv I get the following:

I also noticed that I get 2 different lambdas: lambda.min and lambda.1se
- What is the difference between these lambdas?
- What can I understand from the above plot in general (what are these confidence intervals about, what are the two dotted lines etc)?
If I change to nfolds=10 to perform 10-fold validation, I get different lambda.1se and different coefficients for this lambda. Based on what criterio can I choose the best for me?