In scikit-learn, which models do I need to break categorical variables into dummy binary fields?
For example, if the column is political-party
, and the values are democrat
, republican
and green
, for many algorithms, you have to break this into three columns where each row can only hold one 1
, and all the rest must be 0
.
This avoids enforcing an ordinality that doesn't exist when discretizing [democrat, republican and green]
=> [0, 1, 2]
, since democrat
and green
aren't actually "farther" away then another pair.
For which algorithms in scikit-learn is this transformation into dummy variables necessary? And for those algorithms that aren't, it can't hurt, right?