I am confused now about the loss functions used in `XGBoost`

. Here is how I feel confused:

- we have
`objective`

, which is the loss function needs to be minimized;`eval_metric`

: the metric used to represent the learning result. These two are totally unrelated (if we don't consider such as for classification only`logloss`

and`mlogloss`

can be used as`eval_metric`

). Is this correct? If I am, then for a classification problem, how you can use`rmse`

as a performance metric? - take two options for
`objective`

as an example,`reg:logistic`

and`binary:logistic`

. For 0/1 classifications, usually binary logistic loss, or cross entropy should be considered as the loss function, right? So which of the two options is for this loss function, and what's the value of the other one? Say, if`binary:logistic`

represents the cross entropy loss function, then what does`reg:logistic`

do? - what's the difference between
`multi:softmax`

and`multi:softprob`

? Do they use the same loss function and just differ in the output format? If so, that should be the same for`reg:logistic`

and`binary:logistic`

as well, right?

*supplement for the 2nd problem*

say, the loss function for 0/1 classification problem should be
`L = sum(y_i*log(P_i)+(1-y_i)*log(P_i))`

. So if I need to choose `binary:logistic`

here, or `reg:logistic`

to let xgboost classifier to use `L`

loss function. If it is `binary:logistic`

, then what loss function `reg:logistic`

uses?