One-hot-encoding

The one-of-K or one-hot-encoding scheme uses dummy variables to encode categorical features. Originally it was applied to digital circuits. The dummy variables have binary values like bits, so they take the values zero or one (equivalent to true or false). For instance, if we want to encode continents, we will have dummy variables, such as is_asia, which will be true if the continent is Asia and false otherwise. In general, we need as many dummy variables, as there are unique labels minus one. We can determine one of the labels automatically from the dummy variables, because the dummy variables are exclusive. If the dummy variables all have a false value, then the correct label is the label for which we don't have a dummy variable. The following table illustrates the encoding for continents:

Is_africa

Is_asia

Is_europe

Is_south_america

Is_north_america

Africa

True

False

False

False

False

Asia

False

True

False

False

False

Europe

False

False

True

False

False

South America

False

False

False

True

False

North America

False

False

False

False

True

Other

False

False

False

False

False

The encoding produces a matrix (grid of numbers) with lots of zeroes (false values) and occasional ones (true values). This type of matrix is called a sparse matrix. The sparse matrix representation is handled well by the SciPy package, and shouldn't be an issue. We will discuss the SciPy package later in this chapter.

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