I know that the computation in scikit-learn is based on NumPy so everything is a matrix or array.

How does this package handle mixed data (numerical and nominal values)?

For example, a product could have the attribute 'color' and 'price', where color is nominal and price is numerical. I notice there is a model called 'DictVectorizer' to numerate the nominal data. For example, two products are:

```
products = [{'color':'black','price':10}, {'color':'green','price':5}]
```

And the result from 'DictVectorizer' could be:

```
[[1,0,10],
[0,1,5]]
```

If there are lots of different values for the attribute 'color', the matrix would be very sparse. And long features will degrade the performance of some algorithms, such as decision trees.

**Is there any way to use the nominal value without the need to create dummy codes?**