# Variance Thresholding Binary Features

## Preliminaries

```
from sklearn.feature_selection import VarianceThreshold
```

## Load Data

```
# Create feature matrix with:
# Feature 0: 80% class 0
# Feature 1: 80% class 1
# Feature 2: 60% class 0, 40% class 1
X = [[0, 1, 0],
[0, 1, 1],
[0, 1, 0],
[0, 1, 1],
[1, 0, 0]]
```

## Conduct Variance Thresholding

In binary features (i.e. Bernoulli random variables), variance is calculated as:

$$\operatorname {Var} (x)= p(1-p)$$

where $p$ is the proportion of observations of class `1`

. Therefore, by setting $p$, we can remove features where the vast majority of observations are one class.

```
# Run threshold by variance
thresholder = VarianceThreshold(threshold=(.75 * (1 - .75)))
thresholder.fit_transform(X)
```

```
array([[0],
[1],
[0],
[1],
[0]])
```