I have a dataset with a number of binary predictors and binary outcome. I am trying to use logistic regression to predict the outcome and use caret package.

For some reason, after training my model does not produce result, but finishes without any errors. However, when I train with cross-validation, I get the result.

```
> Model = train(success ~ . - contestid - index - tags, data = p.train,
+ method = "glm",
+ family = binomial(link = "logit"),
+ trControl = trainControl(method = "none"));
Warning message:
glm.fit: fitted probabilities numerically 0 or 1 occurred
> Model$results
[1] Accuracy Kappa parameter
<0 rows> (or 0-length row.names)
```

With cross-validation:

```
> Model = train(success ~ . - contestid - index - tags, data = p.train,
+ method = "glm",
+ family = binomial(link = "logit"),
+ trControl = trainControl(method = "cv"));
There were 22 warnings (use warnings() to see them)
> Model$results
parameter Accuracy Kappa AccuracySD KappaSD
1 none 0.8 0.4208333 0.1972027 0.460482
> Model$resample
Accuracy Kappa Resample
1 0.75 0.5000000 Fold01
2 0.50 0.2000000 Fold02
3 1.00 1.0000000 Fold03
4 0.75 0.5000000 Fold04
5 1.00 1.0000000 Fold05
6 1.00 NA Fold06
7 0.75 0.5000000 Fold07
8 0.75 0.0000000 Fold08
9 0.50 -0.3333333 Fold09
10 1.00 NA Fold10
```

All warnings are the same, about the fitted probabilities, since my data allows perfect separation. However, this does not prevent training with cv to produce results.

What might be the reason for the absence of results in the first case?

Thanks

`"none"`

produces single model. No parameters optimization is done. Thus the field`results`

is empty. You can check`glm.fit$finalModel`

– DrDom Jul 18 at 11:03`DrDom`

has the correct diagnosis – topepo Jul 21 at 17:24