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DOC: Added examples for union_categoricals #16397

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68 changes: 68 additions & 0 deletions pandas/core/dtypes/concat.py
Original file line number Diff line number Diff line change
Expand Up @@ -242,6 +242,74 @@ def union_categoricals(to_union, sort_categories=False, ignore_order=False):
- sort_categories=True and Categoricals are ordered
ValueError
Empty list of categoricals passed

Notes
-----

To learn more about categories, see `link
<http://pandas.pydata.org/pandas-docs/stable/categorical.html#unioning>`__

Examples
--------

>>> from pandas.api.types import union_categoricals

If you want to combine categoricals that do not necessarily have
the same categories, `union_categoricals` will combine a list-like
of categoricals. The new categories will be the union of the
categories being combined.

>>> a = pd.Categorical(["b", "c"])
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can you add a from pandas.api.types import union_categorical at the beginning?

>>> b = pd.Categorical(["a", "b"])
>>> union_categoricals([a, b])
[b, c, a, b]
Categories (3, object): [b, c, a]

By default, the resulting categories will be ordered as they appear
in the `categories` of the data. If you want the categories to be
lexsorted, use `sort_categories=True` argument.

>>> union_categoricals([a, b], sort_categories=True)
[b, c, a, b]
Categories (3, object): [a, b, c]

`union_categoricals` also works with the case of combining two
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@TomAugspurger @jorisvandenbossche do we quote like this in a doc-string?

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I think this is OK (I don't think we consistently follow strict guidelines, but the numpydoc docstring explanation says to use single backticks to refer the keyword arguments or functions)

categoricals of the same categories and order information (e.g. what
you could also `append` for).

>>> a = pd.Categorical(["a", "b"], ordered=True)
>>> b = pd.Categorical(["a", "b", "a"], ordered=True)
>>> union_categoricals([a, b])
[a, b, a, b, a]
Categories (2, object): [a < b]

Raises `TypeError` because the categories are ordered and not identical.

>>> a = pd.Categorical(["a", "b"], ordered=True)
>>> b = pd.Categorical(["a", "b", "c"], ordered=True)
>>> union_categoricals([a, b])
TypeError: to union ordered Categoricals, all categories must be the same

New in version 0.20.0

Ordered categoricals with different categories or orderings can be
combined by using the `ignore_ordered=True` argument.

>>> a = pd.Categorical(["a", "b", "c"], ordered=True)
>>> b = pd.Categorical(["c", "b", "a"], ordered=True)
>>> union_categoricals([a, b], ignore_order=True)
[a, b, c, c, b, a]
Categories (3, object): [a, b, c]

`union_categoricals` also works with a `CategoricalIndex`, or `Series`
containing categorical data, but note that the resulting array will
always be a plain `Categorical`

>>> a = pd.Series(["b", "c"], dtype='category')
>>> b = pd.Series(["a", "b"], dtype='category')
>>> union_categoricals([a, b])
[b, c, a, b]
Categories (3, object): [b, c, a]
"""
from pandas import Index, Categorical, CategoricalIndex, Series

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