I am trying to use Vowpal Wabbit to do a binary classification, i.e. given feature values vw will classify it either 1 or 0. This is how I have the training data formatted.

```
1 'name | feature1:0 feature2:1 feature3:48 feature4:4881 ...
-1 'name2 | feature1:1 feature2:0 feature3:5 feature4:2565 ...
etc
```

I have about 30,000 1 data points, and about 3,000 0 data points. I have 100 1 and 100 0 data points that I'm using to test on, after I create the model. These test data points are classified by default as 1. Here is how I format the prediction set:

```
1 'name | feature1:0 feature2:1 feature3:48 feature4:4881 ...
```

From my understanding of the VW documentation, I need to use either the logistic or hinge loss_function for binary classifications. This is how I've been creating the model:

```
vw -d ../training_set.txt --loss_function logistic/hinge -f model
```

And this is how I try the predictions:

```
vw -d ../test_set.txt --loss_function logistic/hinge -i model -t -p /dev/stdout
```

However, this is where I'm running into problems. If I use the hinge loss function, all the predictions are -1. When I use the logistic loss function, I get arbitrary values between 5 and 11. There is a general trend for data points that should be 0 to be lower values, 5-7, and for data points that should be 1 to be from 6-11. What am I doing wrong? I've looked around the documentation and checked a bunch of articles about VW to see if I can identify what my problem is, but I can't figure it out. Ideally I would get a 0,1 value, or a value between 0 and 1 which corresponds to how strong VW thinks the result is. Any help would be appreciated!

`--bfgs`

) will fail to train anything and will predict (almost) only positive labels. Random shuffling of the training data prevents this common pitfall. It is not strictly required if your training data are already shuffled (or if they follow some natural chronological order). – Martin Popel Jul 26 '16 at 18:22`{1,-1}`

labels for training and`{0,1}`

labels for testing. #2 example order is critically important in online learning (unclear what your order is). #3 weight of 0 of an input feature is ignored. Also see similar Qs: stackoverflow.com/questions/24822288/… and stackoverflow.com/questions/24634602/… – arielf Aug 1 '16 at 2:32