I would like to find a way to define weights for gbm in caret package. There is a parameter "weights" in the "train" function for "caret" package but the description says "This argument will only affect models that allow case weights". As per my understanding "gbm" does support defining the weights but I do not know the format of defining weights. Is it simply c(1,10) - where 1 is for majority class and 10 is for minority class?
The second question is on Kappa statistic. I read that Kappa is a better performance metric for class imbalanced data sets but failed to understand how. I will appreciate some guidance on why Kappa is a better performance metric compared to ROC for class imbalanced data set.
Thanks.