The keras `BatchNormalization`

layer uses `axis=-1`

as a default value and states that the feature axis is typically normalized. Why is this the case?

I suppose this is surprising because I'm more familiar with using something like `StandardScaler`

, which would be equivalent to using `axis=0`

. This would normalize the features individually.

Is there a reason why samples are individually normalized by default (i.e. `axis=-1`

) in keras as opposed to features?

**Edit: example for concreteness**

It's common to transform data such that each feature has zero mean and unit variance. Let's just consider the "zero mean" part with this mock dataset, where each row is a sample:

```
>>> data = np.array([[ 1, 10, 100, 1000],
[ 2, 20, 200, 2000],
[ 3, 30, 300, 3000]])
>>> data.mean(axis=0)
array([ 2., 20., 200., 2000.])
>>> data.mean(axis=1)
array([ 277.75, 555.5 , 833.25])
```

Wouldn't it make more sense to subtract the `axis=0`

mean, as opposed to the `axis=1`

mean? Using `axis=1`

, the units and scales can be completely different.

Edit 2:

The first equation of section 3 in this paper seems to imply that `axis=0`

should be used for calculating expectations and variances for each feature individually, assuming you have an (m, n) shaped dataset where m is the number of samples and n is the number of features.

Edit 3: another example

I wanted to see the dimensions of the means and variances `BatchNormalization`

was calculating on a toy dataset:

```
import pandas as pd
import numpy as np
from sklearn.datasets import load_iris
from keras.optimizers import Adam
from keras.models import Model
from keras.layers import BatchNormalization, Dense, Input
iris = load_iris()
X = iris.data
y = pd.get_dummies(iris.target).values
input_ = Input(shape=(4, ))
norm = BatchNormalization()(input_)
l1 = Dense(4, activation='relu')(norm)
output = Dense(3, activation='sigmoid')(l1)
model = Model(input_, output)
model.compile(Adam(0.01), 'categorical_crossentropy')
model.fit(X, y, epochs=100, batch_size=32)
bn = model.layers[1]
bn.moving_mean # <tf.Variable 'batch_normalization_1/moving_mean:0' shape=(4,) dtype=float32_ref>
```

The input X has shape (150, 4), and the `BatchNormalization`

layer calculated 4 means, which means it operated over `axis=0`

.

If `BatchNormalization`

has a default of `axis=-1`

then shouldn't there be 150 means?

`axis=-1`

goes in the direction of the columns, and if each row is a sample, then individual samples would be normalized - no?